BASIC AND APPLIED SOCIAL PSYCHOLOGY. 28(1). 1-16

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BASIC AND APPLIED SOCIAL PSYCHOLOGY. 28(1). 1-16 Copyright 0 2006. Lawrence Erlbaum Associates. Inc. Improved Self-Control: The Benefits of a Regular Program of Academic Study Megan Oaten and Ken Cheng Macquarie University, Sydney Academic examination stress impairs regulatory behavior by consuming self-control strength (Oaten & Chang, 2005). In this study, we tested whether a study intervention program. a form of repeated practice of self-control, could improve regulatory strength and dampen the debili- tating effects of exam stress. We assessed 2 cohorts at baseline and again at the commencement of exams. Without any intervention, we replicated our previous findings of deteriorations in regulatory behaviors at exam time. Students receiving the study program, however, showed sig- nificant improvement in self-regulatory capacity as shown by an enhanced performance on a visual tracking task following a thought-suppression task. During examinations, these partici- pants also reported significant decreases in smoking, alcohol. and caffeine consumption and an increase in healthy eating, emotional control. maintenance of household chores, attendance to commitments, monitoring of spending, and an improvement in study habits. Hence, the study program not only overcame deficits caused by exam stress but actually led to improvements in self-control even during exam time. Self-regulation or self-control (terms used interchangeably here) can be defined as the capacity to enact control over one's behavior. Self-control is needed to override dominant behaviors that may be self-destructive, irrational, or undesir- able in the long term. Examples of typical self-control prob- lems include not exercising enough, engaging in unsafe sex- ual practices, abusing drugs and alcohol, overspending, and not sticking to study schedules. Our goals in this study were to (a) replicate the finding that real world stress, specifically academic examinations, consume self-control strength and consequently produce im- pairments in a number of unrelated regulatory behaviors (Oaten & Cheng, 2005a), and (b) test whether the repeated practice of self-control (a study intervention program) could improve regulatory strength and make students less vulnera- ble to the debilitating effects of periods of high academic demand. RESOURCE MODEL OF SELF-CONTROL A recent model suggests a lack of self-regulatory resources as one reason why self-regulation might fail (Baumeister, Correspondence should be addressed to Megan Oaten. Department of Psychology. Macquarie University. Sydney. New South Wales. Austra- lia 2109. E-mail: Heatherton, & Tice, 1994; Muraven, Tice, & Baumeister, 1998). The resource model considers self-control to operate like a muscle. Any act of self-control tires this muscle, leav- ing less available strength for subsequent self-control tasks. This muscle is considered to fatigue easily, as all acts of self-control have been argued to draw on a common resource or regulatory strength that is of limited capacity and is there- fore readily depleted. This aspect of the model is well estab- lished, with evidence to suggest that in the short term, peo- ple's capacity for self-control diminishes following exertion much like muscular action. For example, when individuals were asked to engage in tasks involving self-regulation, the ability to self-regulate in subsequent activities significantly declined (Muraven et al., 1998; Vohs & Heatherton, 2000; Vohs & Schmeichel, 2003). This effect of depletion has been reported across a variety of tasks in physical, intellectual, and emotional domains. ACADEMIC STRESS AND SELF-CONTROL FAILURE Failures of self-control may be related to experienced stress. A disturbing trend in student health is the reported increase in student stress internationally (Sax, 1997; Cotton, Dollard, & de Jonge, 2002). Students report experiencing academic stress at predictable times each semester, with the greatest EFTA01113830 2 OATEN AND CHENG sources of academic stress resulting from studying for and taking exams, grade competition, and the large amount of course content to master in a small amount of time (Archer & Lamnin, 1985; Britton & Tesser, 1991; Kohen & Fraser, 1986). Examination periods have been used to investigate a number of stress responses. A finding that surfaces in these studies is that many forms of self-regulation break down when people are managing stress. For example, West and Lennox (1992) reported that smoking level among students was higher immediately preceding exams than at a more neu- tral period. Cartwright et al. (2003) revealed that greater aca- demic stress was associated with more fatty food intake, less fruit and vegetable intake, more snacking, and a reduced like- lihood of daily breakfast consumption. Recent longitudinal research has found that academic examination stress was as- sociated with increases in cigarette smoking and decreases in physical activity (Steptoe, Wardle, Pollard, Canaan, & Davies, 19%). In a previous study (Oaten & Cheng, 2005a), we tested whether at stressful times (during examination periods) peo- ple fail at self-regulation in domains in which control has pre- viously been successful (e.g., diet). We found that students at exam time reported breakdowns in regulatory behavior that were not found in a control group. We found this effect in both a laboratory task (Stroop Test; Stroop, 1935) and on a range of self-reported day-to-day behaviors. Performance on the Stroop Test deteriorated following thought suppression, a form of regulatory activity, during the examination period. Outside of the examination period, no such effect due to thought suppression was evident. Exam time also proved det- rimental to a number of other self-control operations. During the examination period, students reported an increase in smok- ing and caffeine consumption; a decrease in healthy dietary habits, emotional control, frequency and duration of physical activity, maintenance of household chores and self-care hab- its, attendance to commitments, and monitoring of spending; and deterioration of sleep patterns and study habits. In light of the resource model of self-control, our interpre- tation of the link between exam stress and self-control failure is that managing stress requires self-regulation and thus de- pletes limited regulatory resources. An important part of the body's defenses for coping with stress is the "fight-or-flight" response. The fight-or-flight response prepares people for physical, emotional, and mental action and is considered es- sential for survival (Selye, 1956). These fight-or-flight re- sponses, however, can be counterproductive when dealing with the stresses of modem life such as academic examina- tions (Zillman, 1983). People therefore require self-regulation to override these natural responses to substitute other, quite unnatural responses (such as studying harder) in their place. Stress regulation may also involve processes that demand inhibition, such as ignoring sensations, overriding negative thoughts, and suppressing emotions (Wegner & Pennebaker, 1993) as well as regulating attention (Hockey, 1984). Glass, Singer, and Friedman (1%9) found that there is a "psychic cost" of controlling stress such that this cost is reflected in a re- duced capacity to regulate task performance following an external stressor (unpleasant electric shock or unpredictable noise). Glass et al.'s (1969) findings that performance is im- paired following stressors have been replicated many times us- ing measures of frustration tolerance (Glass & Singer, 1972), proofreading (Gardner, 1978; Glass & Singer, 1972), and the Stroop Task (Glass & Singer, 1972). These tasks all required the individual to override a dominant response, thus requiring self-control (Muraven & Baumeister, 2000). It seems that the work required to control stress leaves the individual less able to regulate behavior successfully. Poorer self-control is a conse- quence of previous attempts to regulate stress. SELF-REGULATORY IMPROVEMENT Thus, artificial laboratory tasks of self-regulation and having to deal with the stress of examination both lead to poorer self-control. These findings support one important aspect of the resource model: depletion. In addition, the resource model makes a second prediction: Self-control should also become stronger with repeated practice, and such strengthen- ing may provide a strategy to counter regulatory failure. Previous research has found that the repeated practice of self-control was followed by increments in self-control per- formance (Muraven, Baumeister, & Tice, 1999; Oaten & Cheng, 2005b; Oaten, Cheng, & Baumeister, 2003). In the study with the longest duration, the uptake and maintenance of an exercise program over a 2-month period produced sig- nificant improvements in a wide range of regulatory behav- iors (Oaten & Cheng, 2005b). Improvements were found in a laboratory task (visual tracking under distraction, which is used in this study as well) and on many self-reported every- day behaviors. The laboratory measure and the self-reported behaviors bore no resemblance to the exercise program other than that they all involved self-regulation. In particular, indi- viduals who participated in the exercise program demon- strated better self-regulation in other spheres: related (e.g., they engaged in more healthy behaviors), unrelated (e.g., missed fewer appointments), and laboratory based (visual tracking task WM. There are two ways in which self-control strength could be improved. These are consistent with the ways in which muscular strength can be increased: power (an increase in the simple baseline capacity) and stamina (a reduction in vulner- ability to fatigue). Muraven et al. (1999), Oaten et al. (2003), and Oaten and Cheng (2005b) found evidence for increased stamina. The self-regulatory training appears to make people less vulnerable to the effects of resource depletion. THIS RESEARCH In this study, we examined how students fared in the exami- nation period after they had been partaking in a regular study EFTA01113831 IMPROVED SELF-CONTROL 3 TABLE 1 Timeline for Study Program Thu Semester I Baseline Exams Semester Break Semester 2 Control Baseline Control Follow-up Baseline Exams Cohort Cohort 2 SP WL SP WL C C SP SP Note. SP = intervention phase (study program): WL = no-intervention phase (waiting list control): C = control phase (non-stressful testing sessions. program. In the experimental design, two cohorts partici- pated in the study intervention program (Table () at different times of the academic year. Cohort 1 entered the study inter- vention program directly; they were tested twice across Se- mester 1 (baseline, exams). Cohort 2 was tested across a time span that included parallel testing sessions to Cohort I during Semester 1 (waiting-list control). Cohort 2 then entered a control phase that included two assessments of self-regula- tory behavior (baseline, follow-up) during the semester break, which provided a neutral period of academic demand. The control phase tests whether any obtained findings were the result of repeated testing and provides measures of retest reliability. Finally, Cohort 2 entered the study intervention program in Semester 2. Cigarette smoking, alcohol consumption, and caffeine consumption are some of the behaviors included in this study. Cigarettes, alcohol, and caffeine are the most widely used psychoactive substances in the world (Nehlig, 1999). Despite differing levels of social acceptability, these behav- iors are all considered addictive (Stepney, 1996) and there- fore require some level of regulatory management (Mumford, Neill, & Holtzman, 1988). The other regulatory behaviors of interest are diet, physical activity, self-care hab- its such as household chores, emotional control, study habits, spending habits, and time management. If managing the stress of examinations does deplete regulatory resources, and the repeated practice of self-control does improve regulatory capacity, then we would expect (a) maintenance or even im- provement in regulatory behavior at exam time for those peo- ple participating in the intervention phase (study program), (b) impairment in regulatory behavior for those people in the no-intervention phase (waiting-list control) during exam time, and (c) no change in regulatory behavior across the control phase (nonstressful testing sessions). We were also interested in finding out whether academic stress affects self-control performance on a standard labora- tory task. We used visual tracking under distraction, which requires participants to perform a computerized VTT while a distracter video is played simultaneously at a loud vol- ume. The VTT requires participants to track the movement of multiple independent targets displayed on a computer monitor (Pylyshyn & Storm, 1988; Scholl, Pylyshyn, & Feldman, 2001). The participant must ignore the distracter video content and attend only to the VIT. In a recent set of studies, VTT performance deteriorated only when follow-ing tasks that required some form of regulatory exertion— in particular, a thought-regulation task (Oaten & Cheng, 2005b) or emotion regulation (Oaten, Chau, & Cheng, 2005)—but was unaffected when following tasks that did not require self-control (watching humorous videos; Oaten et al., 2005). Thus, this task is sensitive to depletion manip- ulations but not to nondepleting intervening tasks. In this study, we administered the VTT twice at each session, and in between V11' testings, participants were told to control their thoughts by not thinking about a white bear. This is a standard manipulation of regulatory depletion used in past research (Muraven et al., 1998). Our (Oaten & Cheng, 2005b) previous research has found that performance on the VTT is highly sensitive to an intervening thought-sup- pression task, performance being worse after 5 min of thought suppression. A program of regular physical exer- cise, however, alleviated the adverse effect of the thought-suppression task on the VTT. We were therefore interested in finding out whether a study intervention pro- gram would have similar effects. We predicted similar per- formance on the VTT before thought suppression in all conditions. After thought suppression, however, perfor- mance on the V11' should be most impaired in participants tested at exam time without intervention (waiting-list con- trol), next most impaired in participants tested during nonstressful times (control), and least impaired in partici- pants who had partaken the study intervention program (study program). METHOD Participants A total of 45 Macquarie University undergraduates (7 men and 38 women) recruited from introductory psychology courses participated in return for partial fulfillment of a course requirement. The age of participants ranged from 18 to 51 years, with a mean age of 23 years. We randomly assigned participants to one of two cohorts (Cohorts 1 and 2). Cohort 1 = 28; 4 men and 24 women) entered the study intervention phase directly and was indi- vidually tested in 2- to 30-min sessions separated by 8-week interim periods. Cohort 2 = 17; 3 men and 14 women) first entered the no-intervention phase (wait-list control) and then EFTA01113832 4 OATEN AND CHENG provided general controls (control phase) before proceeding to the study intervention phase and were individually tested in 6- to 30-min sessions separated by 8-week interim periods. Design Table 1 shows the schedule of testing for the two cohorts. Co- hort 1 entered the intervention phase (study program) di- rectly. We obtained baseline measures for Cohort I in Week 5 of Semester 1, the commencement of the study program, and then again during the exam period for that semester. Cohort 2 entered the no-intervention phase (waiting-list control) in Se- mester I with no study program. Parallel to Cohort 1, we ob- tained baseline measures for Cohort 2 in Week 5 and then again during the exam period. Cohort 2 entered the interven- tion phase (study program) in Semester 2. We again obtained baseline measures in Week 5, at the commencement of the study program, and then during the exam period. Cohort 2 also provided general controls by participating in two testing sessions (baseline, follow-up) occurring during nonstressful times. This served as within-subjects and between-subject control for the effects of the study program. All testing ses- sions were uniform. Experimental sessions were separated by 8-week periods. We tailored study programs to suit each participant's stu- dent workload and included the provision of a study register (log of hours spent studying, which was submitted to us in testing sessions), study diary (which was also submitted in experimental sessions), artificial early deadlines, and a study schedule for the examination period. We give more details following. We analyzed each experimental phase (intervention, no-intervention, and control) separately using a more conser- vative alpha value of .01 for all statistical tests due to re- peated analysis of the same participants. Study Program Participants were instructed to bring both their student time- table (i.e., a schedule of class contact hours) and assessment timetable (due dates for coursework assessments) to the ini- tial testing session. We discussed with the participants any work commitments that needed to be incorporated into the study program. Artificial early deadlines. Self-imposed deadlines are a popular strategy used by many in attempts to curb procrasti- nation (Tice & Baumeister, 1997). In fact, recent research suggested that external deadlines are more effective than self-imposed deadlines in boosting task performance (Ariely & Wertenbroch, 2002). We therefore imposed early artificial deadlines on participants' assessment schedules. The artifi- cial deadlines required the breaking down of the distant goal into several proximal, specific, clear, achievable goals, thus making participants aware of their own concrete progress, which was required to maintain their long-term engagement with the program (Schunk, 1995; Zimmerman, 1989). Study schedule. The study schedule provided a tem- poral plan for studying in the lead up to examinations. The study schedule specified all of the available dates and times during that specific semester (taking into consideration uni- versity contact hours and any specified work commitments), along with a "suggested" study task designated to a specific date(s). We administered the study schedule so as to enable participants to detect and react to any discrepancies resulting from the comparison of their current level of study and final study goal state over the course of the semester. Students were expected to (a) gradually increase awareness to these suggested versus enacted discrepancies and (b) learn to mod- ify their behaviors so as to reduce incongruities, thus enhanc- ing self-regulation and improving performance. Study register and study diary. These tools provided opportunities for students to monitor themselves and to gen- erate the feedback necessary for self-regulation. Self-moni- toring refers to the activities involved in observing and re- cording one's own behavior (Mace, Belfiore, & Shea, 1989). Feedback is generated by a perceived discrepancy between the outcome state (in this case, the study goal) and the current state regarding the task. This feedback fosters attempts to re- duce any disparity by changing plans, tactics, or strategies; modifying aspects of their goals; or even abandoning the task (Ruder & Winne, 1995). Participants' utilization of these tools was expected to reveal their planning process and their awareness of various cues while monitoring. Manipulation Checks We employed the study register and study diaries as manipu- lation checks to ensure that participants were adhering to the study program. Study register. Average study time was assessed by having participants complete a study register (a log of the time spent studying) throughout the no-intervention (wait- ing-list control) and intervention (study program) phases. For analyses, study time was defined as the total number of hours, on average, that participants studied per week. Study diaries. To assess ease of uptake and mainte- nance of the study program, we employed the use of study di- aries. As part of their diary logs, participants were asked the following questions: "What level of difficulty, if any, have you experienced complying with the program?"; "Do you feel your study habits are improving with the program'?"; and "Do you wish to comment on the program generally?". Par- ticipants were instructed to record their progress in the dia- EFTA01113833 IMPROVED SELF-CONTROL 5 ries provided and to return them to the experimenter at each experimental session. Psychosocial Self-Reports The General Health Questionnaire (GHQ; Goldberg, 1972). We assessed emotional distress in all sessions using the 28-item version of the GHQ. This measure assesses symptoms of emotional distress in four areas: anxiety/insom- nia, somatic symptoms, social and cognitive dysfunction, and depression. The questionnaire referred to respondents' experiences over the past week and was coded using a method that assigns weights of 0, 1, 2 and 3 to each answer option. The GHQ has a high degree of internal consistency, with a reported Cronbach alpha of .87, and retest reliability was reported as .88 (Goldberg, 1972). Perceived Stress Scale (ASS; Cohen, Kamarck, & Mermelstein, 1983). We measured perceived stress in all sessions using the 10-item version of the PSS. We used the PSS to assess the degree to which situations in life are ap- praised as stressful. Each item (e.g., "In the last week, how often have you felt that things were going your way?") was assessed on a 5-point scale ranging from 0 (never) to 4 (very often), with higher scores indicating greater stress. The PSS has been shown to be very useful to assess perceived stress, with an overall Cronbach alpha of .87, and retest reliability was reported as .85 (Cohen et al., 1983). This measure has also been used in studies of academic examination stress (Steptoe et al., 1996; Oaten & Cheng, 2005a). General Self-Efficacy Scale (GSES; Jerusalem & Schwarzer, 1992). We measured self-efficacy in all ses- sions using the 10-item version of the GSES. Each item (e.g., "It is easy for me to stick to my aims and accomplish my goals") was assessed on a 5-point scale ranging from 0 (not at all tnte) to 4 (very true), with higher scores indicating higher perceived self-efficacy. The scale has been used in numerous research projects in which it has typically yielded internal consistencies between a = .76 and .91. Its stability is satisfac- tory, with retest reliability reported as .75 (Jerusalem & Schwarzer, 1992). Behavioral Self-Reports We designed a questionnaire to assess cigarette smoking, al- cohol and caffeine consumption, physical activity, dietary habits, and other regulatory behavior. We administered the questionnaire in both sessions. The test—retest reliability of the questionnaire is reported in the Results. Chemical consumption. We assessed cigarette smok- ing, caffeine consumption, and alcohol consumption by the use of open-ended questions presented in a questionnaire for-mat. We estimated current cigarette smoking as the number of cigarettes smoked over the past 24 hr. We assessed current alcohol consumption using a 7-day recall procedure in which quantity of alcoholic beverage was recorded. We also as- sessed caffeine consumption using a 7-day recall procedure, with quantity being the measure of interest. Dietary habits. We assessed dietary habits by ques- tioning participants about food choice (e.g., "In the last week, how successfully did you maintain a healthy diet?") and dietary restraint (e.g., "In the last week, how often did you eat junk food?) over the past week. Response sets were recorded on a 5-point scale ranging from 0 (never) to 4 (more than once per day). We derived 2 measures for analysis: junk food and healthy eating. Physical activity. We measured exercise by question- ing participants about the frequency and duration of physical activity sessions over the past week. Response sets were re- corded on a 5-point scale ranging from 0 (never) to 4 (more than once per day). We derived 2 measures for analysis: the number of episodes of physical activity and the total duration of physical activity sessions. General regulatory behavior. We measured various everyday behaviors that involve self-control (e.g., "In the last week, how often did you go out with friends instead of study- ing?"). We aimed to include those behaviors that do not serve a stress-relieving function. We recorded response sets on a 5-point scale ranging from 0 (never) to 4 (more than once per day). We derived nine measures for analysis: self-care habits (laundry habits, leaving dishes in the sink), time management (keeping appointments and procrastination), study habits (spending time with friends instead of studying and watching television instead of studying), spending habits (spending without thinking and overspending), and emotional control (loss of temper). Visual Tracking Under Distraction We gave a laboratory task of self-control twice in each test session. Participants performed a VTI' while a distracter video played at the same time in the forefront of the partici- pant. We instructed the participant to ignore the distracter video content and attend only to the Vff. The VTT requires participants to visually track the movement of multiple tar- gets displayed on a computer monitor (see Figure 1). The distracter video included excerpts from a comedy routine by Eddie Murphy (Murphy, Tieken, & Wachs, 1983). The use of the VTT to assess self-regulatory capacity has been validated in previous research (Oaten and Cheng, 2005b; Oaten, et al., 2005), and we selected it for that reason. Stimuli were displayed on an I-Mac* computer equipped with a 15-in. monitor set to a resolution of 800 x 600 pixels EFTA01113834 Step 1 6 OATEN AND CHENG • • • • U Step 2 NI MI IN II NI Step 3 FIGURE 1 A representation of a visual tracking task experimental sequence. Participants view items on computer monitor. In the target identification phase (Step I). six cubes appear on the screen. and three of them Hash briefly to indicate that they are the targets: then all squares move randomly (Step 2). The task of the participant is to select the three targets once they have stopped moving by placing the cursor on them andclicking with the mouse (Step 3). and a refresh rate of 95 Hz. Participants were seated 54 cm away from the monitor. We controlled and measured the VT 1' using Psyscript (Version 4; Bates & D'Oliviero, 2000). Each V11' consisted of 16 trials. At the beginning of each trial, six black squares (20 x 20 mm) were presented in a horizontal line. After 2 sec, three target items were highlighted with small blinking probes (disappearing and reappearing for five flashes). Then all items moved in random trajectories for S sec. After all of the objects stopped moving, the participant had to indicate the three target items using the mouse. The fi- nal mouse click caused the display to disappear, and the par- ticipant initiated the next trial with a key press. Forty-eight sets of trajectories (along with target selec- tions) were generated and stored offline. Participants com- pleted a practice trial for which the data were not collected and then completed the experimental trials in a randomized order (different for each participant). Thought Suppression Task Following the first assessment of self-regulatory perfor- mance, we administered a thought suppression task to ma- nipulate regulatory exertion. The procedure, developed by Wegner, Schneider, Carter, and White (1987), requires the participant not to think about a white bear. This task has been used previously to manipulate self-regulatory depletion (Muraven et al., 1999, 1998). We told participants that over the course of the experiment, they would be asked to perform a cognitive task (thought suppression). We instructed partici- pants to write down all their thoughts on a piece of paper for S min, one thought per line, so that we could "see how you use words in naturally occurring sentences" (Muraven et al., 1998). We then administered the experimental manipulation. We instructed participants to list any thoughts that came to mind with the caution that they should avoid thinking about a white bear. We told participants that whenever they thought of a white bear, they were to write that thought down. We em- phasized that it was critical to change their thoughts immedi- ately and to try not to think of a white bear again. Following the thought suppression task, we recorded a follow-up mea-sure of self-regulatory performance by administering a sec- ond VT1'. Procedure Testing procedure was uniform across sessions. Participants first signed experimental consent forms and we then admin- istered in order a VTT, the thought suppression task, and then a second VT!'. We then obtained measures of emotional dis- tress, perceived stress, perceived self-efficacy, and general regulatory behaviors. We conducted data collection between Tuesday and Friday of each week so that all smoking infor- mation related to a weekday. RESULTS Overall, 9 (24%) women and 2 (28%) men smoked at some point throughout the testing session; 17 (45%) women and 4 (57%) men consumed caffeine; and 21 (55%) women and 4 (57%) men consumed alcohol. The numbers that engaged in regular physical activity included 32 (84%) women and 7 (100%) men. There was no significant difference between genders in the proportions carrying out these behaviors and no baseline differences between the exam-stress and control groups. We restricted analyses of each behavior to those indi- viduals who engaged in these activities rather than the entire sample. Manipulation Checks Study register. The study register (log of hours spent studying) indicated that participants did adhere to the study program. Figure 2 summarizes the mean hours spent study- ing. Cohort 2 was the only cohort to participate in the no-in- tervention phase (waiting-list control) and was therefore the only cohort included in the following analyses. The reported average number of hours spent studying were entered into a session (baseline, exams) repeated measures analysis of vari- ance (ANOVA). The ANOVA showed no effect of session EFTA01113835 IMPROVED SELF-CONTROL 7 Hours studying per week 25 20 5 10 - 5 - 0 Study Habits study time ■baseline: no intervention CI CXIIIIIS: no intervention lIbaseline: intervention Sextons: intervention FIGURE 2 Reported average number of hours spent studying per week (mean ± standard error) across the testing sessions. across the no•intervention phase. Both cohorts participated in the intervention phase (study program) and we included them in the analyses. The reported average number of hours spent studying were entered into a session (baseline, exams) repeated measures ANOVA. The ANOVA found a significant main effect for session, F(1, 44) = 24.58, p< .001. These re- sults suggest that although on average, participants' spent 11 hr per week studying, study time increased to an average of 22 hr per week during the intervention phase (study pro- gram). Study diaries. All study diaries were returned to us as instructed. An inspection of the diaries indicated that all par- ticipants recorded progress on the study program as in- structed. Accordingly, the diary content suggested a roughly equal expenditure of effort from all participants. Entries from the study diaries indicate that the study pro- gram required ongoing regulatory effort. For example, some participant comments include the following: "My studying is improving but it is a constant struggle ... especially when ev- eryone is watching TV ... I want to join them so bad"; "In or- der to stick to the program I have to get out of bed an hour earlier so I can get the study hours in ... some mornings it is so hard to get up ... I'd much prefer to lie in"; and "Studying at uni isn't so bad as everyone is pretty much doing the same thing ... but when I get home and my flatmates are heading out to the pub ... it is so hard not to go with them ... so far I've managed to stay strong and stick to the planned study- ing:' The comments suggest that the academic study pro- gram required self-control. Study Intervention Phase V77: Figure 3 summarizes (striped bars) performance on the VTT across the intervention phase (study program). Both cohorts participated in the intervention phase and were included in the analyses. The thought suppression task caused deterioration in performance at baseline (depletion). This effect of depletion, however, appeared to attenuate I 40 35 30 25 20 IS 10 S 0 Visual Tracking Task baseline: no exams: no baseline: mama intervention intervention intervention intervention la pre Moil& suppression epees thought inippressien FIGURE 3 Error rate on the visual tracking task (meant standard error) measured before and after the thought suppression task across sessions. across sessions, with less depletion during the examination period following participation in the study program. These impressions were confirmed by a Session (Baseline, Exams) x Time (before thought suppression vs. after thought sup- pression) repeated measures ANOVA. With the ANOVA, we found significant main effects for time, F(I, 44) = 2395.40, p < .001, indicating a general tendency toward depletion fol- lowing a previous self-regulatory act; a significant main ef- fect for session, F(I, 44) = 79.96,p < .001, suggesting that vi- sual tracking performance improved across sessions; and a significant Time x Session interaction, F(1, 44) = 359.98, p< .001. The pattern of results indicates that the study program improved regulatory stamina, increasing resistance to the de- bilitating effects of a manipulation of regulatory depletion (a thought suppression task). Behavioral sett-reports. Figures 4 through 10 (black and striped bars) show the reported changes in regulatory be- haviors across the intervention phase (study program). Both cohorts participated in the intervention phase and were in- cluded in the analyses. We entered the data in Figures 4 through 10 into a repeated measures ANOVA, with Session (Baseline, Exams) as the within-subjects variable. We re- stricted analyses of each behavior to those individuals who engaged in these activities rather than the entire sample. Ta- ble 2 summarizes the main effects of session. As predicted, people seemed better able to control their behavior during the exam period following the intervention phase (study program). In fact, all of the behaviors showed changes in the predicted direction. Figure 4 shows a reported decrease in chemical consumption during examinations for those people in the study program. Smoking decreased by a mean of 7 cigarettes per day, caffeine consumption decreased on average by 2 cups per week, and alcohol decreased on av- erage by 2 drinks per week. Figure 5 shows changes in di- etary trends across sessions. Dietary patterns improved for those participants in the study program, with decreased junk EFTA01113836 2 Consumption Patterns alcohol cigarettes caffeine Ohneline: no Lawn...ono° Denims! no tatelvention Obasebne: intervention intenention FIGURE 4 Number of cigarettes (over 24 hr). cups of caffeine. and standard units of alcohol (over 7 days) across sessions (mean ± standard error). We restricted analyses of each behavior to those indi- viduals who engaged in these activities rather than the entiresample. 1. 4 .2 2 3 ° 2 TiDietary Intake healthy eating junkfood bkiehne: DO annum. 0 MANS Intenential Inbasdinc: intervention Meurer interment FIGURE 5 Dietary intake across sessions (mean ± standard error). Frequency of behaviors were coded as follows: 0 = never I = once per week:2 = 2 to 3 times per week: 3 =daily:4 = more than once per day. Physical Activity exercise duration Obaselme: no intervention Cl CLAMS: no intervention • baseline: intervention •cuens: intervention FIGURE 6 Frequency and duration of physical activity acrass ses- sions (mean ± standard error). Frequency of behaviors were coded as follows: 0= never: I = once per week: 2 =2 to 3 times per week: 3 = daily: 4 = more than once per day. Self-can Habib leaving dishes leafing laundry lebaseline no nen ration Oceans no inienen000 •buekne ententotieo •e :Nis': unentonon FIGURE 7 Self-care habits across sessions (mean ± standard er- ror). Frequency of behaviors were coded as follows: 0 = never: I = once per week: 2 = 2 to 3 times per week: 3 = daily: 4 = more than once per day. 8 Study Habits tv instead of study friends instead of study Obaschse. no MIcrveatina Delinens. no intenention ▪ internxilien Monson: intervention FIGURE 8 Study habits across sessions (mean 3 standard error). Frequency of behaviors were coded as follows: 0 = never: I = once per week: 2 =2 to 3 times per week: 3 =daily:4 = more than once per day. Impulse Control impulse over-spending Welding emotional ontrol in basdiiic no interretti00 0 Wens: no inlervential II bother isavennoti Omani. intervention FIGURE 9 Impulse control across sessions (mean ± standard er- ror). Frequency of behaviors were coded as follows: 0 = never: I = once per week: 2 = 2 to 3 times per week: 3 = daily: 4 = more than once per day. 8 EFTA01113837 4 Iv 3 2 1 0 time NIonagement procrastination missing appointments libawItne no intern:mon Clautor m i;oinnntio• I IIII bowline IIIICIN(11001. ffilexamg Savant. FIGURE 10 Time management across sessions (meant tandard error). Frequency of behaviors were coded as follows: 0 = never. 1= once per week: 2 = 2 to 3 times per week: 3 = daily: 4 = more than once per day. food consumption and an increase in healthy eating habits during the examination period. Figure 6 shows the same pat- tern for physical activity. During the exam period, the fre- quency and duration of physical activity increased for those participants in the study program. Figures 7 through 10 show improvements in general regu- latory habits in the lead up to examinations. Following inter- vention, participants reported an increase in attendance to household chores (leaving the dishes in the sink less often and doing the laundry more often), emotional control, and a decrease in impulse spending, overspending, watching tele- vision instead of studying, spending time with friends instead of studying, failures to attend to commitments, and procrasti- nation. No-Intervention Phase (Wading-List Control) VT7: Figure 3 (black bars) summarizes performance on the VTT across the no-intervention phase (waiting-list con- trol). Cohort 2 was the only cohort to participate in the no-in- tervention phase and was therefore the only cohort included in the following analyses. The thought suppression task caused deterioration in performance at baseline (depletion). This effect of depletion, however, appeared to worsen at exam time for those not participating in the study program. These impressions were confirmed by a Session (Baseline, Exams) x Time (before thought suppression vs. after thought suppression) repeated measures ANOVA. With the ANOVA, we found significant main effects for time, F(I, 16) = 3136.52, p < .001 and session, F(l, 16) = 155.82, p < .001, this time suggesting that visual tracking performance wors- ened across sessions and importantly, a significant Time x Session interaction, F(I, 16) = 252.12, p < .001. The pattern of results indicates that participants not in the study program were more vulnerable to the debilitating effects of a manipu- lation of regulatory depletion (a thought suppression task) during the examination period. IMPROVED SELF-CONTROL TABLE 2 Regulatory Behavior: Intervention Phase (Study Program) 9 Behavior df F Consumption Cigarettes' 1. 10 135.87 <.001 AlcohoP 1.24 28.47 <.001 Caffeine 1.20 43.33 < .001 Physical activity Frequency" 1.38 67.86 <.001 Duration' 68.14 <.001 Diet( Junk food 1.44 103.53 <.001 Healthy habits 78.22 <.001 Self-cam habitst Leaving dishes in sink 1.44 29.75 <.001 Leaving laundry 29.33 <.001 General regulator, TV instead of study 1.44 47.43 <.001 Friends instead of study 47.42 <.001 Impulse spending 45.34 < .001 Overspending 70.82 < .001 Emotional control 57.00 < .001 Procrastination 43.90 < .001 Missing appointments 47.42 < .001 Note. Analyses restricted to participants who engaged in these behav- iors. art=11.bn=25. 4tt=21."n=39."n=39. 1N=45. We also compared the no-intervention phase (wait- ing-list control) with the intervention phase (study pro- gram) across cohorts. The two cohorts were compared at the same time of year; they were randomly assigned to con- ditions (see Table 1). We conducted a mixed analysis with session and time serving as within-subjects variables and cohort as the between-subject variable. In the ANOVA, we compared Cohorts I and 2, with Session (Baseline, Exams) x lime (before thought suppression vs. after thought sup- pression) x Cohort (Cohort I [intervention phase] vs. Co- hort 2 ]no-intervention phase]) as factors. The ANOVA found a significant main effect for time, F(l, 43) = 5016.22, p < .001. There was also a significant Time x Co- hort interaction, F(1, 43) = 295.56, p < .00I, indicating that the rates of depletion differed across the cohorts; a signifi- cant Session x Cohort interaction, F(1, 43) = 110.30, p < .001, indicating that overall visual tracking performance differed across groups; and a significant Session x Time x Cohort interaction, F(I, 43) = 406.64, p < .001. These find- ings suggest that during the examination period, partici- pants in the intervention phase (study program) showed a pattern of performance consistent with improved stamina, whereas participants not in the study program appeared more susceptible to the depleting effects of a prior regula- tory exertion (a thought suppression task). Behavioral self-reports. Figures 4 through 10 (grey and white bars) show the reported changes in regulatory be- EFTA01113838 10 OATEN AND CHENG haviors across the no-intervention phase (waiting-list con- trol). Cohort 2 was the only cohort to participate in the no-in- tervention phase and was therefore the only cohort included in the following analyses. We entered the data in Figures 4 through 10 into a repeated measures ANOVA, with session as the within-subjects factor. Table 3 summarizes the main ef- fects of session. As predicted, people not in the study program (no-inter- vention phase) appeared less able to control their regulatory behavior during the examination period. In fact, all of the re- ported behaviors show changes in the predicted direction. Figure 4 shows a reported increase in cigarette smoking, caf- feine, and alcohol consumption during the examination pe- riod for those people not participating in the study program. Cigarettes increased at a mean rate of 13 cigarettes per day, caffeine consumption increased at a mean rate of 4 cups per week, and alcohol increased at a mean rate of 4 drinks per week. Figure 5 shows changes in dietary trends across the no-in- tervention phase, with a reported increase in junk food in- take, and a decrease in healthy eating habits. Figure 6 shows a similar pattern for physical activity, with the reported fre- quency and duration of physical activity of participants not in the study program decreasing during the examinations. Figures 7 through 10 show deficits in general regulatory habits for those not in the study program in the lead up to ex- aminations. Participants reported a decrease in household chores (laundry, leaving the dishes in the sink) and emotional control and an increase in spending without thinking, over- TABLE 3 Regulatory Behavior: No•Intervention Phase (Waiting•List Control) Behavior df F p Consumption Cigarettes• 1.5 106.50 <.001 Alcohol') 1. I 0 19.55 <.031 Caffeine•' 1.8 23.10 <.031 Physical activity° Frequency 1. 16 35.86 <.00I Duration 12.78 <.031 Diet° Junk food I. 16 47.80 <.001 Healthy habits 27.20 <.001 Self-care habits,' Leaving dishes in sink 1.16 13.19 <.031 Leaving laundry 13.18 <.031 General regulatory behavior° TV instead of study 19.43 Friends instead of study 19.42 <.001 Impulse spending 16.10 <.001 Overspending 12.24 <.001 Emotional control 34.00 <.001 Procrastination 19.43 <.001 Missing appointments 15.61 <.001 Note. Analyses restricted to participants who engaged in these behav- iors. an= 6.6n= 11.0n= 9. dN= 17. spending, spending time with friends instead of studying, watching television instead of study, failures to attend to commitments, and procrastination. As with the VTT, we conducted mixed ANOVAs to com- pare the no-intervention phase (waiting-list control) with the intervention phase (study program) within a single statistical test. Again, the two cohorts were randomly assigned and compared at the same points in the semester (see Table 1). We entered each dependant variable in Figures 4 through 10 into the following analyses: a Session (Baseline, Exams) x Cohort (Cohort 1 [intervention phase] vs. Cohort 2 [no-inter- vention phase]) repeated measures ANOVA. Table 4 summa- rizes the inferential statistics. Consistent with the within-sub- jects analyses, significant Cohort x Session interactions indicate that during the examination period, self-regulation in all variables improved for those participants in the inter- TABLE 4 Regulatory Behavior: Cohort 1 (Intervention Phase) Versus Cohort 2 (No•Intervention Phase) Behavior df Consumption Cigarette0 1.9 16.03 <.001 x Cohort 145.24 <.001 Alcohol') 1.23 5.95 <.001 x Cohort 37.97 <.001 Caffeine, 119 4.23 <.001 x Cohort 45.58 <.001 Physical activity Frequency° 1.37 6.46 <.001 x Cohort 60.28 <.001 Duration° 12.04 <.001 x Cohort 44.32 <.001 Diet' Junk food 1.43 7.22 <.001 x Cohort 131.65 <.001 Healthy habits 9.43 <.001 x Cohort 131.64 <.001 Self-care habits' Leaving dishes in sink 1.43 6.29 <.001 x Cohort 31.01 <.001 Doing laundry 6.32 <.001 x Cohort <.001 General regulatory behavior TV instead of study 1.43 5.12 .010 x Cohort 4155 <.001 Friends instead of study 11.12 <.001 x Cohort 4155 <.001 Impulse spending 11.47 <.001 x Cohort 47.18 <.001 Overspending 12.82 <.001 x Cohort 41.75 <.001 Emotional control 4.67 .030 x Cohort 4652 <.001 Procrastination 15.25 <.001 x Cohort 15.25 <.001 Missing appointments 12.97 <.001 x Cohort 15.29 <.001 Note. Analyses restricted to participants who engaged in these behav- iors. an =II. bpi= 25. to =21. tin= 39. 'N = 45. EFTA01113839 IMPROVED SELF-CONTROL 11 TABLE 5 Regulatory Behavior Control Phase Mean and Standard Error Behavior Baseline Follow-Up R df SE M SE Emotional responses' Perceived stress scale 19.1 0.5 19.2 0.8 .98° General health questionnaire 18.8 0.4 18.6 0.3 .94. General self-efficacy scale 193 0.7 19.3 0.8 .96° Consumptionb Cigarettes b 3.1 1.0 3.0 10 .96° Alcohol, 2.1 0.6 2.1 0.6 .94. Caffeined 6.0 0.5 6.2 05 .91* Physical activity° Frequency 21 0.3 2.3 0.2 .97* Duration 1.2 0.3 1.2 0.2 .97* Diet° Junk food 14.2 0.2 14.2 0.2 .97* Healthy habits 3.2 0.3 3.2 0.2 .97* Self-care habits' Leaving dishes in sink 2.9 0.3 2.9 03 .92* Leaving laundry 2.8 0.3 2.7 0.2 .93* General regulatory* TV instead of study 2.7 0.3 2.7 0.2 .96° Friends instead of study 2.6 0.3 2.7 0.2 .96° Impulse spending 2.4 0.2 2.5 0.3 .90* Overspending 2.4 0.3 2.5 03 .80* Emotional control 2.9 0.2 2.9 0.2 .97. Procrastination 2.6 0.3 2.7 0.2 .98* Missing appointments 23 0.3 2.5 0.3 .94• £N= 17. ha =6. = 11. 4=9. 'p is significant at the .01 level, two-tailed. vention phase (study program), whereas regulatory behavior worsened for those participants not in the study program (no-intervention phase). Control Phase Cohort 2 was the only cohort to participate in the control phase (testing during nonstressful times) and was therefore the only cohort included in the following analyses. Table 5 reports the regulatory behavior (mean ± standard error) dur- ing the control phase. There were no significant effects for any of the regulatory behaviors (laboratory or self-reported) across the control sessions, indicating that regulatory behav- ior remained stable during the control phase (Table 5). Test—retest reliability of the general regulatory question- naire was calculated using the Pearson correlation coefficient by correlating Session I (baseline) scores with Session 2 (follow-up) scores from the control phase. Retest reliabilities (Table 5) were generally high, with all but one at .90 or better. Relation Between VTT and Behavioral Self-Reports We tested whether the degree of change in VTT performance across the intervention phase (study program) predicted: (a) TABLE 8 Relationship Between VTT and Behavioral Self-Reports Behavior Difference VTT Differrnee Consumption Cigarettes' Alcohols Caffeine' Physical activity Frequency' Duration' Mete Junk food Healthy habits Self-care habits difference Leaving dishes in sink Doing laundry Regulatoryt TV instead of study Friends instead of study Impulse spending