Predicting student performance using neural network | Blazingprojects Postgraduate Thesis
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Predicting student performance using neural network

 

Table Of Contents


Chapter ONE

INTRODUCTION

  • 1.1Introduction
  • 1.2Background of Study
  • 1.3Problem Statement
  • 1.4Objective of Study
  • 1.5Limitation of Study
  • 1.6Scope of Study
  • 1.7Significance of Study
  • 1.8Structure of the Research
  • 1.9Definition of Terms

Chapter TWO

LITERATURE REVIEW

  • 2.1Understanding Neural Networks
  • 2.2History of Neural Networks
  • 2.3Types of Neural Networks
  • 2.4Applications of Neural Networks
  • 2.5Neural Networks vs Traditional Computing
  • 2.6Training Neural Networks
  • 2.7Neural Networks in Education
  • 2.8Challenges of Neural Networks
  • 2.9Future Trends in Neural Networks
  • 2.10Case Studies of Neural Network Applications

Chapter THREE

SYSTEM DESIGN AND IMPLEMENTATION

  • 3.1Research Methodology Overview
  • 3.2Research Design
  • 3.3Data Collection Methods
  • 3.4Sampling Techniques
  • 3.5Data Analysis Methods
  • 3.6Ethical Considerations
  • 3.7Validity and Reliability
  • 3.8Research Limitations

Chapter FOUR

SYSTEM TESTING AND EVALUATION

  • 4.1Data Analysis and Interpretation
  • 4.2Overview of Findings
  • 4.3Performance Prediction Model Results
  • 4.4Factors Influencing Student Performance
  • 4.5Comparison with Existing Models
  • 4.6Implications of Findings
  • 4.7Recommendations for Future Research
  • 4.8Practical Applications of the Study

Chapter FIVE

SUMMARY, CONCLUSION AND RECOMMENDATIONS

  • 5.1Summary of Findings
  • 5.2Conclusion
  • 5.3Contributions to Knowledge
  • 5.4Implications for Practice
  • 5.5Recommendations for Further Study

Thesis Abstract

Predicting student performance using neural network has become a popular research area due to its potential to improve educational outcomes and provide valuable insights for educators and policymakers. In this study, we propose a novel approach that utilizes neural network models to predict student academic performance based on various input features. The dataset used in this study consists of student information such as demographics, socioeconomic status, previous academic history, and study habits. These features are preprocessed and fed into the neural network model for training and testing. The neural network architecture includes multiple hidden layers with different activation functions to capture the complex relationships within the data. The performance of the neural network model is evaluated using metrics such as accuracy, precision, recall, and F1-score. The results show that the neural network model outperforms traditional machine learning algorithms in predicting student performance. The model achieves high accuracy and generalization on the test dataset, indicating its potential for real-world applications. Furthermore, we conduct feature importance analysis to identify the most influential factors that affect student performance. This analysis provides valuable insights for educators to understand the key determinants of academic success and tailor interventions accordingly. By leveraging the predictive power of neural network models, educators can proactively identify at-risk students and provide personalized support to improve their outcomes. In addition, we explore the interpretability of the neural network model to gain insights into its decision-making process. By visualizing the model's internal representations and feature attributions, we aim to enhance the transparency and trustworthiness of the predictive system. This interpretability aspect is crucial for stakeholders to understand how the model makes predictions and to ensure ethical considerations in educational decision-making. Overall, our study demonstrates the effectiveness of neural network models in predicting student performance and providing actionable insights for educational stakeholders. By leveraging advanced machine learning techniques, educators can harness the power of data to support student success and enhance the quality of education. This research contributes to the growing body of literature on predictive analytics in education and highlights the potential of neural network models for improving student outcomes.

Thesis Overview

<p> </p><div><b><b><b><p><b>INTRODUCTION</b></p><p><b>1.0 &nbsp; &nbsp; &nbsp; Background of the Study</b></p><p>Education is an essential factor for improving the socio-economic, cultural, and political development of a country; for this reason, its role cannot be overemphasized (Ajayi &amp; Ekundayo, 2008). &nbsp; &nbsp; &nbsp; &nbsp; In our contemporary world, higher education is an important means for economic and social development and progress of a country. It should be noted that higher education is not just one of many means to a middle-class life; it has become most essentially the only means (Tierney, 2006).</p><p>The university admission system is charged with the responsibility of admitting prospective students into the university using guidelines that are set by the Joint Admission and Matriculation Board and the National University Commission. The Federal government of Nigeria established the Joint Admission and Matriculation Board (jamb) in 1978 to handle admission processes (Asein &amp; Lawal, 2007). The board aims at establishing a unified standard for carrying out matriculation examination and giving admission to qualified candidates into the university academic system (Asein &amp; Lawal, 2007).</p><p></p><p>A prospective candidate must acquire at least a five credit pass in relevant senior secondary school subjects include Mathematics and English and also to score the required score in the Unified Tertiary Matriculation Examination (UTME) for the desired choice of institution and course (Salim, 2006). The guidelines set by the federal government for admission into institution of higher learning (State, Federal and Private Universities) are based on quota systems in which 45% of candidates are admitted on merit, 35% on catchment and 20% on educationally less developed states mostly the northern states.(Bakwaph, 2013). Considering the statistics above only 45% of students are admitted based on high academic performance, the admission system has failed due to cheating, bribery for admission, exam scores manipulation and most of the competent candidates are denied admission (Moja, 2000), although the admission policy provides equitable admission into the universities.</p><p>This situation has affected the standard of students being admitted into tertiary institutions, students admitted find it difficult to pass their first year courses, and those who passes do have poor grades, greater number of university graduates in Nigeria graduates with grades below the second class upper division and the number of student spilling over is increasing regularly and a worse scenario is the case in which graduates from tertiary institutions are not productive in the labor market due to the fact that they perform below expectation of the employers (Ajaja 2010).</p><p>The inability of the university admission system to give admission to candidate who will likely do well and other factors has being held responsible for the decline in the performance of undergraduate student. Hence this study takes a different approach to solve the problem of admission by exploring how to use an artificial neural network model to predict the performance of a candidate before offering the candidate admission. An artificial neural network has the ability to learn and extrapolate patterns therefore predicting student performance will be based on extrapolating patterns from historical data of previous student and their respective performance</p><p></p></b></b></b></div><b><b><b><div><p><b>1.1 &nbsp; &nbsp; &nbsp; Statement of the Problem</b></p><p>The poor quality of graduates of most Nigerian universities is overwhelming and the ability to predict or forecast the performance of students remains significant to the growth and development of an institution and the country at large.</p><p>The quality of candidates who are to be admitted into the universities of higher learning affects the level of training and research within the academic institution and generally affects the development and growth of the country.</p><p>The inability of the university admission system to give admission to candidate who will likely do well and other factors has being held responsible for the decline in the performance of undergraduate student, for this reason this research work tries to proffer solution by providing a means to evaluate prospective student who are to be considered for admission, so thereby admitting those who are likely to perform well in school.</p><p><b>1.2 &nbsp; &nbsp; &nbsp; Aim and Objectives</b></p><p>The aim of this project work is to use an artificial neural network model to predict prospective candidate’s performance when admitted. This aim is achievable through the following objectives</p><p>1. &nbsp; &nbsp; To determine key factors that directly or indirectly affects the performance of students</p><p>2. &nbsp; &nbsp; To transform highlighted key factors into a form that can be represented in a neural network</p><p>3. &nbsp; &nbsp; To use transformed factors as background data to train, validate and test an artificial neural network that can predict a student performance seeking admission into the university or institution of higher learning.</p><p><b>1.3 &nbsp; &nbsp; &nbsp; Scope of the Study</b></p><p>This study attempts to identify various factors that affect students’ performance or factors that have the potential of determining how a candidate will perform when admitted into the university and uses this factors as background data for system coding so as to use a suitable artificial neural network model to predict a prospective student performance.</p><p>This study spans the department of Computer Science, Federal University of Technology Minna.</p><p><b>1.4 &nbsp; &nbsp; &nbsp; Limitation of the Study</b></p><p><b></b></p><b><p>Data used to train, validate and test the network was obtained from the department of computer science Federal University of Technology Minna, therefore it may not be generalize to other department and schools of higher learning.</p><p><b>1.5 &nbsp; &nbsp; &nbsp; Significance of the Study</b></p><p>The ability to predict or forecast the performance of a prospective candidate seeking admission will eliminate the problem faced by the university admission system in determining which student will do well when admitted into the institution hence improves the University admission system</p></b></div></b></b></b> <br><p></p>

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