A Review on Evaluation Metrics for Data Classification Evaluations 论文

2015International Journal of Data Mining & Knowledge Management Process引用 2652
Face and Expression RecognitionAdvanced Computational Techniques and ApplicationsText and Document Classification Technologies

详细信息

发表期刊/会议
International Journal of Data Mining & Knowledge Management Process
发表日期
2015-03-31
发表年份
2015

关键词

Face and Expression RecognitionAdvanced Computational Techniques and ApplicationsText and Document Classification Technologies

摘要

Evaluation metric plays a critical role in achieving the optimal classifier during the classification training. Thus, a selection of suitable evaluation metric is an important key for discriminating and obtaining the optimal classifier. This paper systematically reviewed the related evaluation metrics that are specifically designed as a discriminator for optimizing generative classifier. Generally, many generative classifiers employ accuracy as a measure to discriminate the optimal solution during the classification training. However, the accuracy has several weaknesses which are less distinctiveness, less discriminability, less informativeness and bias to majority class data. This paper also briefly discusses other metrics that are specifically designed for discriminating the optimal solution. The shortcomings of these alternative metrics are also discussed. Finally, this paper suggests five important aspects that must be taken into consideration in constructing a new discriminator metric.