원문정보
초록
영어
With the rapid development of the Internet, the application of data mining in the Internet is becoming more and more extensive. However, the data source’s complex feature redundancy leads that data mining process becomes very inefficient and complex. So feature selection research is essential to make data mining more efficient and simple. In this paper, we propose a new way to measure the correlation degree of internal features of dataset which is a mutation of mutual information. Additionally we also introduce Hoeffding inequality as constraint of constructing algorithm. During the experiments, we use C4.5 classification algorithm as test algorithm and compare HSF with BIF(feature selection algorithm based on mutual information). Experiments results show that HSF performances better than BIF[1] in TP and FP rate, what’s more the feature subset obtained by HSF can significantly improve the TP, FP and memory usage of C4.5 classification algorithm.
목차
1. Introduction
1.1. Research Background
1.2. Paper Work
2. Dynamic Data-Stream Feature Selection Algorithm
2.1. Set Unit Mutual Information
2.2. Hoeffding Inequality Theory
2.3. HSF Algorithm Description
2.4. Algorithm Analysis
3. Experiments and Results Analysis
3.1. Experiment Dataset
3.2. Experiment Scheme and Evaluation Standards
3.3. Experiment Result Analysis
4. Conclusions
References