International Journal of Interactive Mobile Technologies (iJIM) – eISSN: 1865-7923 – Vol. 14, No. 1, 2020 Paper—Gender and Age Differences in the Study Plan of University Students Gender and Age Differences in the Study Plan of University Students https://doi.org/10.3991/ijim.v14i01.11232 Hilary I. Okagbue (), Sheila A. Bishop, Anjoreoluwa E. Boluwajoko, Adaeze M. Ezenkwe, Glory N. Anene, Boluwatife E. Akinsola, Ifeanyi B. Offiah Covenant University, Canaanland, Nigeria hilary.okagbue@covenantuniversity.edu.ng Abstract—An effective study plan is a predictor of good academic performance. However, there are few shreds of evidence available on the role of gender and age in the study plan for students. This paper investigated the role of gender and age in the adoption of a study plan that can guarantee success. A questionnaire was designed and administered to undergraduate students of a world-class privately funded university located in Ogun State, Nigeria. Simple random sampling was used and 294 students responded. Chi-square test of independence revealed that gender and age are not associated with frequency of study, study environment, study content preferences, and study motivation. There is no Gender difference in the preference of study type, factors that drive, motivation for study and satisfaction with the study plan whereas, age is significantly associated. The logistic regression model was significant and correctly classified 66.3% of satisfaction with the study plan. Gender was not significant but the age of students can predict their satisfaction with their study plan. Older students have more odds to be satisfied with their study plan. As students progressed from year one to the final year, they tend to adopt a study plan that can help them obtain high grades and graduate with good results. Timely academic advising or mentorship is advocated especially for freshers. Keywords—Study plan, gender, age, statistics, Logistic regression, Chi-square, learning, Artificial Neural Network. 1 Introduction An adequate study is needed for good academic performance, which can take the form of studying alone or in groups [1]. Group study can be a discussion class, tutorials or group project. Different arguments in this context point that group or collaborative study facilitates learning faster than studying alone [2]. Competition, self-motivation, peer pressure or desire for higher grades are some of the variables that can trigger the rate and frequency of study if factors such as medical, socioeconomic, psychosocial and sociodemographic factors are kept constant [3-4]. 62 http://www.i-jim.org https://doi.org/10.3991/ijim.v14i01.11232 mailto:hilary.okagbue@covenantuniversity.edu.ng Paper—Gender and Age Differences in the Study Plan of University Students Technology in recent years has created a virtual, online, or mobile learning environment as against the traditional classroom environment [5]. Many students prefer to learn in a quiet and conducive study environment [6]. The propensity of covering course contents in a conducive learning environment differs in many aspects. These include the nature of the course, academic calendar, and other teacher-centered or student-centered factors. Adequate coverage of the course contents will lead to efficient learning, higher grades, and preparation for life after graduation. In addition, adequate lecture content helps in preparing the students for graduate studies [7]. Generally, researchers are divided on what leads to the students’ satisfaction with their study plan or reading schedule. It appears that different learning environments and behavioral differences continue to make each of the research different but with similar conclusions. This paper seeks to investigate the gender and age differences in the study plan or reading schedule of students in a world-class university in Ogun State, Nigeria. The university met some of the criteria of world-class statuses, such as effective teaching, quality research output [8-9], a conducive environment for learning, low attrition and high graduation rate [10-13]. This is a clear departure from the status quo as far as Nigeria is concerned [14-15]. 2 Literature Review 2.1 Gender and age differences in cognitive abilities and pedagogy Gender and age differences are often considered in research in cognitive abilities or pedagogy [16-18]. Two distinct hypotheses are usually stated, significant or not significant age or gender differences. Significant in this context implies if the studied phenomenon is affected by age or gender. The implications of the significance or otherwise are used to explain the implication for study, research or practice. Significant gender differences: Significant gender differences imply that cognitive abilities or the effect of pedagogy have significant effects on gender. Hence, there is the presence of clear and noticeable differences in the way the gender responds to the studied phenomena. Significant gender differences were found to affect the following: manners of adoption of mobile learning resources [19-22], Reading preferences of electronic and hardcopy texts [23], assessment methods [24] and personalized learning and learning behaviors [25-26]. No significant gender differences: No significant gender differences imply that the effect of the study phenomenon is the same for males and females. That was observed in when there are no gender differences in using smart mobile devices for learning and electronic learning technology acceptance [27-29], computer-based test performance [30-31], and adopting flipped pedagogy [32]. Significant age differences: Early initiation of learning processes has been advocated to prepare the ground for future advancement. In addition, teaching children early in age will help stimulate their interest [33]. Nevertheless, significant age different imply that the effect of cognitive abilities and pedagogy is different iJIM ‒ Vol. 14, No. 1, 2020 63 Paper—Gender and Age Differences in the Study Plan of University Students across the studied ages. Hence, some age group seems to respond faster or positively more than others. The significant age difference was observed in studies conducted to determine the extent of mobile learning devices adoption and usage [34-36]. Others are electronic learning adoption [37], social media learning adoption [38], blended learning adoption [39], learning goal [40] and self-assessment [41]. Significant age differences mean that different strategies have to be adopted to have the desired effects on the targeted age groups. No significant age differences: No significant age differences imply that the effect of the study phenomenon is the same for all the ages. No age differences were observed in the investigation of the attitudes of undergraduates and postgraduate students’ towards the adoption and utilization of mobile learning technologies [42- 43]. In similar studies, the researchers found no significant age differences between paper-based learning and electronic learning [44] and learning how to use new electronic learning tools [45]. Gender and age differences are not the only variables; some authors have considered other factors such as level, entry requirements, education history, race, religion, and others. Moreover, gender and age differences are widely used and can easily be used to create distinct classes, which can easily be analyzed. Some cases can be seen in [46-49]. 2.2 Factors affecting the students’ study plan Studies have shown that there are factors that influence the study plan or time spent by undergraduate students in universities. The factors are two-sided, positive and negative factors. The positive factors are those that predict good academic success while the negative factors are those predispose the students to non-performing or underperforming in their academic pursuit. Some of the factors are listed.  Health: This is the most important predictor of academic progress as poor health reduces physical, mental and emotional activities. Students that are ill or have some ailments such as sickle cell anemia, asthma, and other similar ailments are most likely to spend less time on their studies. It is because their situation warrants that some sizeable time is allocated to the management of their health. The same applies to students with physical or learning disabilities [50]. The nature of a disability may require that more time is to be created for effective study.  Sporting activities and leisure: Excessive physical activities can attenuate the time available for study, although sporting activities help in mental development [51]. Increased metabolism triggered by strenuous sporting activities can accentuate the sleep duration. Leisure and non-modifiable’ activities can also affect the study time [52]. Traveling away from home for study can be associated with risky behaviors that greatly reduced the time spent on academic works [53]  Economic status: Students from high-income families are more financially stable and as such can concentrate on their studies. On the other hand, students that are from low-income backgrounds have to source for more finances to augment the stipends received from their guardians and sponsors. In that circumstance, the 64 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students students have little choice than to work longer hours thereby shortening the available study and sleep time. Bursary and financial subsidies can help to create financial buffers for low-income students thereby freeing up time for them to study more frequently [54].  Psychological problems: Psychological episodes and negative emotions can shorten the time spent on study or learning a task [55]. Academic activities can be attenuated in extreme cases where students are to be in mandatory observation to prevent self-harm or harm to others. Excessive stress can greatly decrease the amount of concentration needed for effective study. Depression, anxiety, and mind wandering are some of the psychological problems [56]. At times, some of the problems are triggered by short sleep duration because of long hours spent of study, sedentary behavior and other activities [57].  Parental linguistic input: Studies have shown that parental verbal encouragement and praise helps students to study harder and attain academic success [58]. The parental linguistic input is more effective at infancy and it is a predictor of good academic success and perseverance in adulthood [59]. Students from broken homes, abusive, aggressive and alcoholic parents are most likely to be discouraged from an effective study [60].  Time spent on social media: Advances in sciences have collapsed international boundaries leading to a faster medium of social interaction using technology. Social networking sites are heavily utilized for social interaction, the transmission of information and familial linkages. Students spent some time at social networking sites, which can affect the amount of time they spent [61]. Incorporating learning tools into social media platforms is a welcome initiative to secure the attention of the students and induce them to learn [62].  The study plan of students may be predicted by future career prospects and aspirations [63]. Students that aspire to work in a certain organization after graduation can alter their study plan to accommodate other professional training such as certifications or skill acquisition training [64].  Environment. Study environment has a role to play in encouraging or discouraging students from reading. A serene atmosphere and the well-equipped and spacious library is needed to ensure effective study [65]. The time spent on campus is the function of the environment [66]. Insecurity, political instability, and violent demonstration are likely to alter the study mode of students. So also are pollution (most especially noise pollution), weather, climate, and other geographical factors.  Time management: Time is required for every academic activity. A study plan is a product of clear time management. Poor time management is a predictor of poor academic performance [67]. This is exacerbated when the student has no interest in the course of study [68].  Pedagogy: How knowledge is imparted is an important variable of a study plan. A good teacher-student relationship usually results in efficient knowledge impartation and sustained by subsequent reading and study [69]. Study plan is affected by the availability of learning materials, modules and past questions and tutorial classes [70-71], mode of enrollment (dual or concurrent) [72], assessment mode (pen and paper, online) [73], degree of study mode (full-time, part-time, sandwich, distance iJIM ‒ Vol. 14, No. 1, 2020 65 Paper—Gender and Age Differences in the Study Plan of University Students learning) [74], course loads and lecture time table [75] and mode of learning (blended, flipped, face to face) [76]. Others are the number of time allocated for teaching [77], self-testing and directed learning {78-79] and private tutoring [80]. The present study considered the frequency of study, study preferences, study environment, study content preferences, study motivation, factors that drive motivation and satisfaction that drive motivation for study. 3 Materials and Methods 3.1 Study area The research was carried out in a world-class privately funded university located in Ogun State, southwest Nigeria. 3.2 Statistical methodology A questionnaire was designed in such a way to address the stated objectives of the study. Simple random sampling was adopted in the administration of the questionnaire to the undergraduate students of the university. Part-time and postgraduate students were excluded. A pilot study was done and the inconsistencies noticed were corrected in the instrument of data collection. Five investigators distributed three hundred (300) questionnaires and 294 were successfully returned and analyzed using SPSS 23.0. Cross tabulation was used to classify the variables because the data is in counts or frequency. Chi-square test of independence was used to establish relationships between the response variables while logistic regression mythologies were employed to obtain the predictors of satisfaction with study plans. 4 Results 4.1 Descriptive statistics for the gender and age of respondents Out of the 294 students that responded to the questionnaire, 135 (45.9%) were male and 159 (54.1%) were female. 62 (21.1%) were between the ages of 15 and 17, 124 (42.2%) were between the ages of 18 and 20, and 108 (36.7%) were aged 21 and above. 4.2 Frequency of study The students were asked how often they studied or engage in academic reading. 82 (27.9%) responded that they studied daily, 119 (40.5%) stated weekly and 93 (31.6%) 66 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students noted that they only studied when it is close to the examinations. The gender and age cross tabulation on the frequency of study are shown in Tables 1 and 2. Table 1. Gender and Frequency of Study Frequency of Study Gender Total Male Female Daily 41 41 82 Weekly 60 59 119 Close to exam 34 59 93 Total 135 159 294 Table 2. Age and Frequency of Study Frequency of Study Age Total Between 15 to 17 Between 18 to 20 21 and above Daily 19 36 27 82 Weekly 28 50 41 119 Close to exam 15 38 40 93 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender and age are not associated with frequency of study (PCS = 4.802, p = 0.091) and (PCS = 3.176, p = 0.529) respectively. The pattern of frequency of study is the same for both the males and females, their ages notwithstanding, although 119 out of 294 students study on a weekly basis. Approximately, one out of three students studied close to the exam. 4.3 Study preferences The students were asked their study preferences. 124 (42.2%) prefer to study alone, 112 (38.1%) prefer to study in a group of two and 58 (19.7%) prefer to study in a group of three and above. The high percentage of solitary study preferences is an indication that the students have access to study materials, textbooks and past questions and hence, they prefer to study alone. The gender and age cross tabulation on the study preferences are shown in Tables 3 and 4. Table 3. Gender and Study preferences Study preferences Gender Total Male Female Alone 54 70 124 Group of 2 55 57 112 3 and above 26 32 58 Total 135 159 294 iJIM ‒ Vol. 14, No. 1, 2020 67 Paper—Gender and Age Differences in the Study Plan of University Students Table 4. Age and Study preferences Study preferences Age Total Between 15 to 17 Between 18 to 20 21 and above Alone 37 54 33 124 Group of 2 19 40 53 112 3 and above 6 30 22 58 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender is not associated with study preferences (PCS = 0.767, p = 0.682). However, there is a significant association between age and study preferences (PCS = 17.896, p = 0.001). Males and females have the same study preferences patterns. 4.4 Study environment The students were asked about their preferences of the suitability of their study environment. 184 (62.6%) prefer to study in a quiet environment, 30 (10.2%) prefer noisy environment and 80 (27.2%) prefer to study in a moderately quiet or noisy environment. The high percentage of those that prefer to study in a quiet environment could be an indication that the university is conducive and serene environment is needed for effective study. The result also indicates that the university has well- equipped and spacious library where students study in a quiet mode. The gender and age cross tabulation on the study environment are shown in Tables 5 and 6. Table 5. Gender and Study Environment Study Environment Gender Total Male Female Quiet 90 94 184 Noisy 14 16 30 Moderately quiet/ noisy 31 49 80 Total 135 159 294 Table 6. Age and Study Environment Study Environment Age Total Between 15 to 17 Between 18 to 20 21 and above Quiet 41 71 72 184 Noisy 2 15 13 30 Moderately quiet/ noisy 19 38 23 80 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender and age are not associated with the study environment (PCS = 2.327, p = 0.312) and (PCS = 6.918, p = 0.140) respectively. The desire for a quiet and serene environment is the same for all genders and ages. 68 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students 4.5 Study content preferences The students were asked if they studied outside their course contents. 69 (23.5%) admitted that they studied beyond their course content, 132 (44.9%) prefer to study within the given course content while 93 (31.6) admitted that they sometimes studied beyond their course content. This result is an indication that the students are just reading to pass their examinations and not eager to go beyond what the classroom can offer. The gender and age cross tabulation on the study content preferences are shown in Tables 7 and 8. Table 7. Gender and Study Content Preferences Study Content Preferences Gender Total Male Female Yes 32 37 69 No 66 66 132 Sometimes 37 56 93 Total 135 159 294 Table 8. Age and Study Content Preferences Study Content Preferences Age Total Between 15 to 17 Between 18 to 20 21 and above Yes 11 30 28 69 No 26 54 52 132 Sometimes 25 40 28 93 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender and age are not associated with the study content preferences (PCS = 2.300, p = 0.317) and (PCS = 4.205, p = 0.379) respectively. This result is an indication that the students are just reading to pass their examinations and not eager to go beyond what the classroom can offer. 4.6 Study motivation The students were asked whether they are always motivated to study. 101 (34.4%) of the students responded ‘yes’ to the question, 53 (18.0%) responded ‘no’ and 140 (47.6%) responded ‘sometimes’. This is an indication that the curricula of the various courses offered by the students need urgent review in order to address the problem of low motivation. The high unemployment in Nigeria can also be contributory factor. The gender and age cross tabulation on the study motivation are shown in Tables 9 and 10. iJIM ‒ Vol. 14, No. 1, 2020 69 Paper—Gender and Age Differences in the Study Plan of University Students Table 9. Gender and Study Motivation Study motivation Gender Total Male Female Yes 48 53 101 No 29 24 53 Sometimes 58 82 140 Total 135 159 294 Table 10. Age and Study Motivation Study Motivation Age Total Between 15 to 17 Between 18 to 20 21 and above Yes 23 45 33 101 No 7 22 24 53 Sometimes 32 57 51 140 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender and age are not associated with the study motivation (PCS = 2.894, p = 0.235) and (PCS = 3.628, p = 0.459) respectively. 4.7 Factors that drive motivation for study The students were asked what drives and motivates them to study always. 56 (19.0%) of the students stated that personal interest are what drive and motivate them to study, 52 (17.7%) admitted that their peer groups drive them to study, 156 (53.1%) believe that the drive to have high grades push them to study and 30 (10.2%) noted that there are other reasons best known to them. Reading solely for passing examinations can be attributed to this result. The gender and age cross tabulation on the factors that drive motivation for study are shown in Tables 11 and 12. Table 11. Gender and Factors that Drive Motivation for Study Drivers for Study motivation Gender Total Male Female Personal interest 30 26 56 Peer group 23 29 52 High grades 69 87 156 Others 13 17 30 Total 135 159 294 70 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students Table 12. Age and Factors that Drive Motivation for Study Drivers for Study motivation Age Total Between 15 to 17 Between 18 to 20 21 and above Personal interest 16 29 11 56 Peer group 5 14 33 52 High grades 37 71 48 156 Others 4 10 16 30 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender is not associated with factors that drive motivation for study (PCS = 1.640, p = 0.650). However, there is a significant association between age and Factors that drive motivation for study (PCS = 29.489, p = 0.000). 4.8 Satisfaction with study plan The students were asked if they are satisfied with their study plan. 100 (34%) of the students admitted that they are satisfied with their study plan while 194 (66%) are not satisfied with their study plan. This is an indication that there is prevalence of poor time management, poor lecture time table and stress. The gender and age crosstabulation on the satisfaction with study plan are shown in Tables 13 and 14. Table 13. Gender and Satisfaction with Study Plan Satisfaction with Study Plan Gender Total Male Female Yes 51 49 100 No 84 110 194 Total 135 159 294 Table 14. Age and Satisfaction with Study Plan Satisfaction with Study Plan Age Total Between 15 to 17 Between 18 to 20 21 and above Yes 28 54 18 100 No 34 70 90 194 Total 62 124 108 294 Pearson Chi-square (PCS) tests showed that gender is not associated with satisfaction with study plan (PCS = 1.576, p = 0.209). However, there is a significant association between age and satisfaction with study plan (PCS = 22.935, p = 0.000). Dissatisfaction with study plan increases as the students move from year one to final year. iJIM ‒ Vol. 14, No. 1, 2020 71 Paper—Gender and Age Differences in the Study Plan of University Students 4.9 Predictors of satisfaction with study plan Logistic regression is employed to determine the extent to which gender and age of the respondents can predict their satisfaction with the study plan. The assumptions of logistic regression were violated as the dependent variable (satisfaction with study plan) is dichotomous, the independent variable (age) is ordinal and gender is categorical. Observations are independent since different students filled the questionnaires and Box-Tidwell test for linearity was positive. Since the gender is categorical, females in this case are to be compared with males, which acts as the reference category. The model summary is presented in Table 15. Table 15. Model summary The explained variance in the satisfaction with the study plan by the logistic model is poor, although the model is significant as obtained from the Hosmer and Lemeshow test which yielded a Chi-square = 9.471, degrees of freedom = 4 and p value = 0.050. The classification table is presented in Table 16, which showed that the model was able to accurately classify the 66.3% of satisfaction with the study plan of the students with a cut value of 0.5. Table 16. Classification Table for the Predicted Dependent Variable Observed Predicted Are you satisfied with your personal study plan Percentage Correct Yes No Step 1 Are you satisfied with your personal study plan Yes 13 87 13.0 No 12 182 93.8 Overall Percentage 66.3 The investigation of the contributions of the age and gender to the model is shown in Table 17. It can be seen that age added significantly to the model at p value = 0.000 as increase in the age of the students increases their probability of their satisfaction with their study plan. Table 17. Variables in the equation The significance contribution of age to the logistic regression model implies that it can be used in prediction of the students’’ satisfaction with some calculated probability. Artificial Neural Networks (ANN) model was applied, with age as the Step -2 Log likelihood Cox & Snell R Square Nagelkerke R Square 1 356.907 0.066 0.091 Variables B S.E. Wald D.F. Sig. Exp(B) Gender(1) -0.355 0.256 1.933 1 0.164 0.701 Age Constant 0.729 0.031 0.174 0.248 17.511 0.016 1 1 0.000 0.900 2.074 1.032 72 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students only factor (independent factor) and no covariates. ANN used 203 (69%) of the data for training and 91 (31%) for testing. The model is presented in Table 18 and can be seen that both the cross entropy error and the percentage of incorrect predictions reduced after testing. The classification table is presented in Table 19. The model was able to accurately predict 71.4% of the dependent variable (satisfaction with study plan) using the age as the independent variable. Table 18. ANN Model Summary Table 19. ANN Classification for the Model Sample Observed Predicted Yes No Percent Correct Training Yes 0 74 0.0% No 0 129 100.0% Overall Percent 0.0% 100.0% 63.5% Testing Yes 0 26 0.0% No 0 65 100.0% Overall Percent 0.0% 100.0% 71.4% 5 Discussion and Conclusion The gender and age of the students are not associated with the frequency of study. The pattern of the frequency of study is the same irrespectively of the age and gender of the student. Intervention programs are needed to encourage the students to study daily and to discourage them from waiting until close to the exams before they can study since this research showed that the students exhibit the same behavioral patterns in terms of frequency of study. Mobile technologies when adopted is likely to have the same effect in encouraging the students to study daily [28], [45]. Social media can be adopted and learning materials can be made available here since the students spent a substantial amount of time there [62]. There are no gender differences in the preference of study type whereas age is. The result has shown that as the students progressed from one level (year) to another, they tend to adopt study preferences, which are independent of gender. Those that could not study with friends are most likely to study alone until they graduate while those that have formed study groups are likely to continue until graduation, gender notwithstanding. The availability of learning resources [71] and good student-teacher relationship [70] are likely to encourage students to study alone Gender and age are not associated with the study environment. The students are unanimous on the preferences for quiet and serene environment devoid of external disturbances [65]. Training Cross Entropy Error 127.886 Testing % Incorrect Predictions Cross Entropy Error % Incorrect Predictions 36.5% 52.649 28.6% iJIM ‒ Vol. 14, No. 1, 2020 73 Paper—Gender and Age Differences in the Study Plan of University Students There are no gender and age differences in the study content preferences. It can be observed from Table 7 that only 69 (23%) of the students study outside their given course contents. This is worrisome as the university is a place where students are expected to study beyond the scope given to them. The following strategies can be adopted to encourage the students to read beyond their course contents. They include term paper, discussion groups, group presentation, note preparation and others too numerous to mention. Dissatisfaction with the course of study could be implicated [68]. Additional skills have to be included in the curriculum to ensure that they are appropriately prepared for their career path since the present study showed that the majority of the students are not comfortable with the course contents [64]. This is an indication that their course contents do not prepare them for the challenges that are to face after graduation. An urgent review of the curriculum is needed. Age and gender are not associated with the study motivation, however, more research is needed to reveal the variables that constituted the why the 140 (47.6%) students did not choose straight yes or no but rather chose ‘sometimes’. High levels of unemployment sustained by steady population growth and inadequate planning can be the cause of low motivation. Often, graduates spent years looking for nonexistent jobs and the psychological trauma associated with that is enough to discourage young people aspiring to study in higher institutions of learning. There are no gender differences in the factors that drive motivation for study whereas age is. The result has shown that as the students progressed from one level (year) to another, they tend to study harder to obtain high grades that are required for graduation [40]. Therefore, older students tend to study harder to make up for the shortcomings of their previous years. The high percentage of students (53%) that chose high grades as the main driver for their study motivation is expected and is independent of gender. Most of the students are aspiring to graduate with good results and that motivates them to study hard to obtain high grades in their courses. Gender is not associated with satisfaction with study plan, whereas age is. Older students tend to be satisfied with their adopted study plan because of experience and drive for higher grades. Academic counselling is needed to advise the students on the suitable study plan that can increase their satisfaction. The logistic regression revealed that age of students could predict their satisfaction with their study plan. Consequently, older students have more odds to be satisfied or dissatisfied with their study plan. They are satisfied if they are getting their desired grades and dissatisfied if they are underperforming. As students progressed from year one to the final year, they tend to adopt study a plan that can help them obtain high grades and graduate with good result. Artificial Neural Network correctly classified 71.4% of satisfaction using only age as the only factor. The age of the students can appreciably predicts their satisfaction with their study plans. 74 http://www.i-jim.org Paper—Gender and Age Differences in the Study Plan of University Students 6 Recommendation The present study have identified that effective time management, serene environment, robust lecture time table, flexible curriculum and portable and rich learning resources are indispensable in improving the study time of students if successful academic performance is anticipated. 7 Acknowledgement The authors are grateful to Covenant University for providing an enabling environment for this research. 8 References [1] Cojocaru, D. & Tanasie, A. (2020). A Collaborative Approach for practical applications in Higher education. Adv. Intel. Syst. Comput., 916, 77-86. [2] Docherty, M. (2020). Collaborative learning: The Group is greater than the sum of its parts Adv. Intel. Syst. Comput., 916, 26-33. [3] Maulana, R.A. & Yudhistira, M.H. (2019). Do schools compete with each other? 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Self-directed learning improvement through business plan development. Knowledge Magt., 16(4), 4-12. https://doi.org/10.18848/2327-7998/cgp/v16 i04/1-12 [80] Chih-Hao, C. (2019). Effects of Private Tutoring on English Performance: Evidence from Senior High Students in Taiwan. Int. J. Educ. Develop., 68, 80-87. https://doi.org/10.1016/ j.ijedudev.2019.05.003 9 Authors Hilary I. Okagbue Obtained his B.Tech and M.Sc degrees in Industrial Mathematics and Statistics from the Federal University of Technology, Owerri and University of Lagos in 2007 and 2010 respectively. He is currently on a Ph.D programme at Covenant University, Ota, Nigeria where he works as a researcher and Lecturer at the department of Mathematics. His research interests include: Data analysis, Mathematical Statistics, Mathematical Cryptography and analysis of patterns in number theory. Sheila A. Bishop holds N.C.E. Mathematics/Physics, B.Sc(Ed) Mathematics, M.Sc Mathematics and Ph.D degrees in Mathematics from the College of Education Benin, University of Benin, University of Ibadan and Covenant University respectively. She is a faculty in the Department of Mathematics, Covenant University, Nigeria. She has served in various committees at the Departmental, College and University levels from 2007 to date. She is currently the acting head of the Department of Mathematics, 80 http://www.i-jim.org https://doi.org/10.1080/02602938.2018.1545898 https://doi.org/10.1016/j.nedt.2018.05.005 https://doi.org/10.1016/j.nedt.2018.05.005 https://doi.org/10.17718/tojde.522459 https://doi.org/10.1145/3303772.3303783 https://doi.org/10.1145/3303772.3303783 https://doi.org/10.3390/educsci9030167 https://doi.org/10.1080/00220272.2018.1535666 https://doi.org/10.1080/09658211.2017.1397175 https://doi.org/10.1080/09658211.2017.1397175 https://doi.org/10.18848/2327-7998/cgp/v16i04/1-12 https://doi.org/10.18848/2327-7998/cgp/v16i04/1-12 https://doi.org/10.1016/j.ijedudev.2019.05.003 https://doi.org/10.1016/j.ijedudev.2019.05.003 Paper—Gender and Age Differences in the Study Plan of University Students Covenant University, Nigeria. She has a teaching experience of over (2) decades in both public and private schools. She has supervised over ten (10) undergraduate students and currently supervising two (2) post graduate students. She has also served as examiner to several PhD thesis and a reviewer to some journals. She is a Mathematician with research interest in quantum stochastic differential equations, stochastic differential equations, ordinary differential equations, Mathematical Statistics. Some of her research activities in differential equations cover both qualitative and quantitative analysis of solutions. She also has interest in Mathematics education and Mathematical Physics. Anjoreoluwa E. Boluwajoko is an Industrial Mathematics-Statistics student in the Department of Mathematics, Covenant University, Ota, Nigeria. Adaeze M. Ezenkwe is an Industrial Mathematics-Statistics student in the Department of Mathematics, Covenant University, Ota, Nigeria. Glory N. Anene is an Industrial Mathematics-Statistics student in the Department of Mathematics, Covenant University, Ota, Nigeria. Boluwatife E. Akinsola is an Industrial Mathematics-Statistics student in the Department of Mathematics, Covenant University, Ota, Nigeria. Ifeanyi B. Offiah is an Industrial Mathematics-Statistics student in the Department of Mathematics, Covenant University, Ota, Nigeria. Article submitted 2019-07-09. Resubmitted 2019-08-19. Final acceptance 2019-08-22. Final version published as submitted by the authors.e iJIM ‒ Vol. 14, No. 1, 2020 81