DATA MINING TECHNIQUES IN ANALYSIS OF STUDENT COURSE OF STUDY

  • Type: Project
  • Department: Computer Science
  • Project ID: CPU0902
  • Access Fee: ₦5,000 ($14)
  • Chapters: 5 Chapters
  • Pages: 43 Pages
  • Methodology: Nil
  • Reference: YES
  • Format: Microsoft Word
  • Views: 1.6K
  • Report This work

For more Info, call us on
+234 8130 686 500
or
+234 8093 423 853

DATA MINING TECHNIQUES IN ANALYSIS OF STUDENT COURSE OF STUDY
[A CASE STUDY OF OSUN STATE POLYTECHNIC, IREE.]
Abstract

Data mining has a great deal of attention in the information industry in recent year due to the wide availability of high amount of data and the useful information and knowledge. This project is based on the Application of Data mining techniques’ in Analysis of student course of study, that is, to predict course of study for a student that does not meet up with the school cutoff point for post uptime  classification algorithm were used in analyzing the data with the incorporation of a relational data base management system. Conclusively, we have been able to develop software that will generate course of study for students in faculty of science and Engineering.      
TABLE OF CONTENT
CHAPTER ONE: INTRODUCTION
1.1    General Overview                    
1.2    Statement of the Problem           
1.3    Aim and Objectives of the Project       
1.3.1     Aim                       
1.3.2    Objectives                       
1.4    Research Methodology               
1.5    Significance of the Study               
1.6    Scope of the Study               
1.7    Limitations of the Study           
1.8     Data Mining Review           
CHAPTER TWO: LITERATURE REVIEWS
2.1    The Data Base               
2.2    Database Management System       
2.2.1    Structure Query Language (SQL)           
2.3    Data Warehouse                       
2.4    Data Mining           
2.4.1    The Scope of Data Mining           
2.4.2    Data Mining Tasks               
2.5    Other Approach of Data Mining       
2.6    Knowledge Discovery in Database             
CHAPTER THREE: METHODOLOGY
3.1    Data Mining Technique               
3.2    Data Sampling           
3.3    Business understanding           
3.4    Data understanding           
3.5    Data Preparation                       
3.6    Modeling                   
3.6.1    Descriptive Tool                   
3.6.2    Predictive Tool                   
3.6.3    Classification Model               
3.6.4    Types of Classification Algorithm           
3.7    Naïve Bayesian Algorithm            
3.7.1    Data Required for Naïve Bayesian Models       
3.7.2    Technical Notes                   
CHAPTER FOUR: SYSTEM DESIGN AND IMPLEMENTATION
4.1 Organization of Database Table and Field        
4.2 Problem Definition                       
4.3 Stages involved in solving the problem            
CHAPTER FIVE
Summary, Conclusion and recommendations
5.1 Summary and Conclusion               
5.2 Recommendations                       
    References                                 
    Appendix I
    Appendix II
CHAPTER ONE
In recent years, the technology of database has become more advanced where large amount of data is required to be stored in the databases. Data mining then attract more attention to extract valuable information from the raw data that institution can use for decision-making process. It applies modern statistical and computation technologies to expose useful information hidden within the large database to remain competitiveness among educational field, the institution need deep and enough knowledge for a better assessment, evaluation, planning and decision-making. Data mining helps institution to use their current reporting capabilities to discover and identity the hidden patterns in database and hence can be used to predict performance of the student.

Data mining can be viewed as a result of the natural evolution of information technology because before 1960 when database and information technology had not evolved, analysis of data was basically the primitive file processing which would not give the appropriate useful information despites the huge amount of time consumed. The evolutionary path of data mining has been witnessed in the database industry in the development of the following database and information technology.

Data collection and data creation

Data management (including data warehouse and data preparation)

Data analysis and understanding (involving data mining and data interpretation)

Moreover, data mining is also known as knowledge discovery in large database (KDD). Consequently, data mining consist of more than collecting and managing data; it also includes analysis and predictions. Important decision are often made based not on the information rich data stored in database but rather on decision maker's institution, simply because maker does not have the tools to extract the valuable knowledge embedded in the vast amount of data.

1.2 Statement of the problem

It is not feasible for people to analyze great amounts of data without the assistance of appropriate computational tools. Therefore, the development of tools of an automatic and intelligent nature becomes essential for analyzing, interpreting, and correlating data in order to develop and select strategies in the context of each application. To serve this new context, the area of Knowledge Discovery in Databases (KDD), came into existence with great interest within the scientific, industrial, and commercial communities. The popular expression "Data Mining" is actually one of the stages of the Discovery of Knowledge in Databases. The term "KDD" was formally recognized in 1989 in reference to the broad concept of procuring knowledge from databases. One of the most popular definitions was proposed in 1996 by a group of researchers. According to Fayyad, et al. (1996): "KDD is a process with many stages, non-trivial, interactive, and iterative, for the identification of comprehensible, valid, and potentially useful patterns from large data sets". It is of utmost desire to extract valuable information from large databases. 

This research work therefore addresses the intelligent prediction of students' course of study in higher institution based on the historical student academic data. This will facilitate better performance of students in high institutions.

1.3 Aim and Objectives of the Project

1.3.1 Aim

The aim of the research work is to develop a computer application software that will be able to predict student course of study in higher institution using classification algorithm.

1.3.2 Objectives

The following are the set of objectives addressed by the project work:

To develop and populate student academic database

To develop a computer application program that will be able to mine knowledge from the students' academic database using Classification algorithm.

To predict student  course of  study according to their Post UTME cutoff.

To reduce the rate at which student admission is fortified.

DATA MINING TECHNIQUES IN ANALYSIS OF STUDENT COURSE OF STUDY
For more Info, call us on
+234 8130 686 500
or
+234 8093 423 853

Share This
  • Type: Project
  • Department: Computer Science
  • Project ID: CPU0902
  • Access Fee: ₦5,000 ($14)
  • Chapters: 5 Chapters
  • Pages: 43 Pages
  • Methodology: Nil
  • Reference: YES
  • Format: Microsoft Word
  • Views: 1.6K
Payment Instruction
Bank payment for Nigerians, Make a payment of ₦ 5,000 to

Bank GTBANK
gtbank
Account Name Obiaks Business Venture
Account Number 0211074565

Bitcoin: Make a payment of 0.0005 to

Bitcoin(Btc)

btc wallet
Copy to clipboard Copy text

500
Leave a comment...

    Details

    Type Project
    Department Computer Science
    Project ID CPU0902
    Fee ₦5,000 ($14)
    Chapters 5 Chapters
    No of Pages 43 Pages
    Methodology Nil
    Reference YES
    Format Microsoft Word

    Related Works

    CHAPTER ONE 1.0 Introduction Data mining, is the extraction of hidden predictive information from large database, is a powerful new technology with great potential to help companies focus on the most important information in their data warehouses. Data mining... Continue Reading
    ANALYSIS OF DATA MINING TECHNIQUES OF  TELECOMMUNICATION COMPANIES IN NIGERIA: A CASE  STUDY OF MTN NIGERIA CHAPTER ONE INTRODUCTION 1.1   BACKGROUND TO THE STUDY The telecommunications industry generates and stores a tremendous amount of data (Han et al, 2002). These data include call detail data, which describes the calls that traverse the... Continue Reading
    ABSTRACT This study was intended to analyze data mining techniques of telecommunication companies in Nigeria. This study was guided by the following objectives; to provide an overview on data mining. To examine the various data mining... Continue Reading
    ABSTRACT   This research was carried out based on how to reduce fraud activities in mobile telecommunication companies. Focusing on subscribers use of internet and mobile telecommunications, which is the main concern of this research, telecommunication fraud occurs whenever a perpetrator uses deception to receive telephony services free of charge... Continue Reading
    CHAPTER ONE INTRODUCTION 1.0 Introduction Data Mining (DM) really gained a lot of prominence in the society as it helped make prediction methodologies easier in various fields. Data mining may be viewed as the extraction of patterns and models from observed data. Data mining tools aid the discovery of patterns in data. Gartner, the global leader... Continue Reading
    TABLE OF CONTENTS Title Page Approval Page………………………………………………………………..i Certification Page…………………………………………………………… ii Dedication……………………………………………………………………iii... Continue Reading
    ABSTRACT Data mining is the extraction of hidden predictive information from large database which helps in predicting future trend and behavior thereby helping management make knowledge driven decisions. The data mining tool designed is to aid in quick access and retrieval of... Continue Reading
    ABSTRACT In the quest to reduce customer churn rate and retain existing customers, organizations have resorted to investing fortunes in their customer care services, which proves to be a relatively cheaper means of staying in business. In this regard, this project sought to explore a less costly way of providing quality customer care services to... Continue Reading
    ABSTRACT This study was undertaken to assay the elemental concentration in some Irish potatoes and soils from farmlands in an ex-mining area at Dahwol-vwana village, Jos-south L.G.A, Plateau state, Nigeria. The total heavy metal concentrations (for Irish potato and soil samples) were obtained using Atomic Absorption Spectrometer. It was observed... Continue Reading
    ABSTRACT This study was undertaken to assay the elemental concentration in some Irish potatoes and soils from farmlands in an ex-mining area at Dahwol-vwana village, Jos-south L.G.A, Plateau state, Nigeria.... Continue Reading
    Call Us
    whatsappWhatsApp Us