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An Enhanced Classification Technique for Talent Management Using CACC-SVM


Affiliations
1 Department of Computer Science and Engineering, Sona College of Technology, Salem, Tamilnadu, India
     

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Classification of data is becoming a major challenge in Human Resource Management (HRM). The talent management problem in HRM is commonly solved through several classification techniques available in data mining. However the goal of the classification process is to classify the data in a highly accurate manner. Hence in this paper we propose a hybrid classification technique CACC-SVM for classifying data. The concept of discretization and classification are combined. This effectively increases the classification accuracy. The Class Attribute Contingency Coefficient (CACC) is a static, global, incremental, supervised & top down discretization algorithm. This produces concise summarization of continuous attributes which makes the classification process more accurate. The discretized data are then classified using high performing generalized classifier Support Vector Machine (SVM). The result of the proposed algorithm is compared with several traditional classification algorithms. Performance of the algorithms is measured through accuracy rate and error rate. The accuracy rates are higher and error rates are lower for the proposed algorithm.

Keywords

Talent Management, Classification, Support Vector Machines (SVM), Class-Attribute Contingency Coefficient (CACC), Sequential Minimal Optimization (SMO).
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  • An Enhanced Classification Technique for Talent Management Using CACC-SVM

Abstract Views: 256  |  PDF Views: 2

Authors

S. Yasodha
Department of Computer Science and Engineering, Sona College of Technology, Salem, Tamilnadu, India
P. S. Prakash
Department of Computer Science and Engineering, Sona College of Technology, Salem, Tamilnadu, India

Abstract


Classification of data is becoming a major challenge in Human Resource Management (HRM). The talent management problem in HRM is commonly solved through several classification techniques available in data mining. However the goal of the classification process is to classify the data in a highly accurate manner. Hence in this paper we propose a hybrid classification technique CACC-SVM for classifying data. The concept of discretization and classification are combined. This effectively increases the classification accuracy. The Class Attribute Contingency Coefficient (CACC) is a static, global, incremental, supervised & top down discretization algorithm. This produces concise summarization of continuous attributes which makes the classification process more accurate. The discretized data are then classified using high performing generalized classifier Support Vector Machine (SVM). The result of the proposed algorithm is compared with several traditional classification algorithms. Performance of the algorithms is measured through accuracy rate and error rate. The accuracy rates are higher and error rates are lower for the proposed algorithm.

Keywords


Talent Management, Classification, Support Vector Machines (SVM), Class-Attribute Contingency Coefficient (CACC), Sequential Minimal Optimization (SMO).