Employee data mining information system | Blazingprojects Postgraduate Thesis
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Employee data mining information system

 

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

  • 2.1Overview of Data Mining
  • 2.2History of Data Mining
  • 2.3Data Mining Techniques
  • 2.4Applications of Data Mining
  • 2.5Data Mining in the Business Sector
  • 2.6Data Mining Tools
  • 2.7Data Warehousing
  • 2.8Data Privacy and Security
  • 2.9Challenges in Data Mining
  • 2.10Future Trends in Data Mining

Chapter THREE

SYSTEM DESIGN AND IMPLEMENTATION

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

Chapter FOUR

SYSTEM TESTING AND EVALUATION

  • 4.1Data Mining Results Analysis
  • 4.2Data Visualization Techniques
  • 4.3Pattern Recognition in Data Mining
  • 4.4Interpretation of Findings
  • 4.5Comparison with Hypotheses
  • 4.6Implications of Results
  • 4.7Recommendations for Future Research
  • 4.8Managerial Implications

Chapter FIVE

SUMMARY, CONCLUSION AND RECOMMENDATIONS

  • 5.1Summary of Findings
  • 5.2Conclusions
  • 5.3Contributions to Knowledge
  • 5.4Practical Implications
  • 5.5Recommendations
  • 5.6Areas for Future Research
  • 5.7Conclusion

Thesis Abstract

Employee data mining information systems have become crucial tools for organizations to extract valuable insights from their vast amounts of employee data. This research project explores the development and implementation of an employee data mining information system to enhance decision-making processes and optimize human resource management. The primary objective of this study is to design and implement a system that can effectively mine employee data to identify patterns, trends, and correlations that can help organizations make informed decisions. The system will leverage data mining techniques such as clustering, classification, and association to analyze employee data sets and extract meaningful information. The system's architecture will consist of data collection modules to gather employee information from various sources such as HR databases, performance evaluations, and surveys. Preprocessing modules will clean and transform the raw data to make it suitable for analysis. Data mining algorithms will be applied to the preprocessed data to discover patterns and relationships. One of the key challenges in developing an employee data mining information system is ensuring data privacy and security. The system will incorporate robust security measures to protect sensitive employee information and comply with data protection regulations. User authentication and access control mechanisms will restrict access to authorized personnel only. Another critical aspect of the system is the visualization of the mined data. Dashboards and reports will be generated to present the results of data mining analysis in a user-friendly format. Visual representations such as charts, graphs, and heatmaps will help stakeholders interpret the findings and make data-driven decisions. The implementation of the employee data mining information system will involve collaboration with HR professionals and IT experts to ensure that the system meets the organization's requirements. User training sessions will be conducted to familiarize employees with the system's functionalities and empower them to leverage the insights gained from data mining. Overall, the research project aims to demonstrate the value of implementing an employee data mining information system in enhancing organizational decision-making and human resource management. By harnessing the power of data mining techniques, organizations can gain a competitive advantage by effectively utilizing their employee data to drive strategic initiatives and improve overall performance.

Thesis Overview

<p> </p><div><p><strong>INTRODUCTION</strong></p><p><strong>1.0 Introduction</strong></p><p>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 in technology research and IT services define mining as the process of discovering meaningful correlations, patterns and trends by sifting through large amount of data stored in depositories. Any data base or data ware house that is rich and colorful with information has to be mined for intelligent decision making. Over the years, various techniques have evolved in DM namely machine learning, statistics, classification, clustering, rule induction, pattern recognition, neural networks. Out of these classification and predictions gained much importance as they really promoted intelligent decisions. They have also been introduced in machine learning, statistics and pattern recognition. Although DM techniques have attracted all fields like medical, telecommunication, manufacturing, health care and customer relationship, the technique was not of much attraction to the HR fields. But things have changed recently in HR also or the so called Talent Management(TM) which is considered sometimes within and beyond HRM.</p><p>It is very important organizations gain valuable information concerning the performance of the employees or human resources. To achieve this, a data mining system is needed to extract and cluster relevant information about employees performance so as to be able to cluster and easily identify the different data set of employees and their performance.</p><p></p></div><div><p><strong>1.1 Theoretical Background</strong></p><p>In organizations, DM goes beyond the exact purpose when it reaches knowledge discovery. Employee retentions and compensations are done based on these patterns developed. Knowledge Management (KM) is about developing, sharing and applying knowledge within organization to gain and sustain a competitive advantage. Nowadays, in the knowledge era (K-Era), knowledge is a valuable asset and among the crucial issues to address. Knowledge can be discovered through many approaches and one of them is by using data mining technique. In data mining, tasks such as classification, clustering and association are used to discover implicit knowledge from huge amount of data. Classification technique is a supervised learning technique in machine learning, which the class level or the target is already known. There are many fields adapted this approach as their problem solver method, such as finance, medical, marketing, stock market, telecommunication, manufacturing, health care, customer relationship, education and some others. Nevertheless, the application of data mining has not attracted much attention in Human Resource Management (HRM) field (Chien &amp; Chen, 2008;Ranjan, 2008). The vast amount of data in HRM can provide a rich resource for knowledge discovery and for decision support system development. Besides that, the valuable knowledge discovered from data mining process should be considered as part of knowledge management issues. In any organization, they have to struggle effectively in term of cost, quality, service or innovation. The success of these tasks depends on having enough right people with the right skills, employed in the appropriate locations at appropriate point of time. This is categorized as part of the talent management task in HRM. In addition, talent management is a process to ensure the right person is in the right job (Cubbingham, 2007).</p><p><strong>1.2 Statement of the Problem</strong></p><p>Recently, among the challenges of human resource professionals are managing an organization talent which involves a lot of managerial decisions. These types of decision are very uncertain and difficult. It depends on various factors like human experiences, knowledge, preferences and judgments. Besides that, the process to identify the existing talent in an organization is among the top talent management issues and challenges. Employees in an organization are evaluated based on their performance in order to represent their talent ability. In an organization it is difficult to determine the level of performance of employees without a data mining system to extract, classify and predict employee performance. It is in view of this need to apply data mining for obtaining relevant information about employees that necessitated this study.</p><p><strong>1.3 Aim and Objectives of the Study</strong></p><p>The aim of the research work is to develop an employee data mining information system. The following are the specific objectives:</p><ol><li>To develop a database application to capture employee performance record.</li><li>To use data mining technique to extract and process the information for evaluation of employee performance.</li><li>To develop a system that will cluster employee performance information for easy management of employees.</li></ol><p><strong>1.4 Significance of the Study</strong></p><p>The significance of the research work is that it will provide relevant information for the local government employers in Oruk Anam to obtain vital information about the performance of employees. It will enable them identify employees that need more training and those that are performing well. The study will serve as an instant information system for the top level management in the local government. The study will also serve as a useful reference material to other researchers seeking for information related to the subject</p><p><strong>1.5 Scope of the Study</strong></p><p>This research work covers employee data mining information system using Oruk Anam local government area as a case study. It is limited to the mining of employees performance in the local government secretariat.</p><p><strong>1.6 Organization of the Research</strong></p><p>This research work is organized into five chapters. Chapter one is concerned with the introduction of the research study and it presents the preliminaries, theoretical background, statement of the problem, aim and objectives of the study, significance of the study, scope of the study, organization of the research and definition of terms.</p><p>Chapter two focuses on the literature review, the contributions of other scholars on the subject matter is discussed.</p><p></p><p>Chapter three is concerned with the system analysis and design. It presents the research methodology used in the development of the system, it analyzes the present system to identify the problems and provides information on the advantages and disadvantages of the proposed system. The system design is also presented in this chapter.</p><p>Chapter four presents the system implementation and documentation, the choice of programming language, analysis of modules, choice of programming language and system requirements for implementation.</p><p>Chapter five focuses on the summary, constraints of the study, conclusion and recommendations are provided in this chapter based on the study carried out.</p><p><strong>1.7 Definition of Terms</strong></p><p><strong>Data Mining:</strong>&nbsp;A technique for searching large-scale database for patterns.</p><p><strong>Classification:</strong>&nbsp;A distribution into groups</p><p><strong>Prediction:</strong>&nbsp;To estimate how something will be in future</p></div> <br><p></p>

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