Instance-Based Classification through Hypothesis Testing
This addresses the problem of incorporating statistical significance into classification for researchers and practitioners, though it is incremental as it builds on instance-based and hypothesis testing methods.
The paper tackles binary classification by framing it as a two-sample hypothesis testing problem, where distances between test and training instances are used to compute p-values for class assignment. Experimental results on 40 real datasets show it achieves state-of-the-art performance and outperforms existing testing-based classifiers.
Classification is a fundamental problem in machine learning and data mining. During the past decades, numerous classification methods have been presented based on different principles. However, most existing classifiers cast the classification problem as an optimization problem and do not address the issue of statistical significance. In this paper, we formulate the binary classification problem as a two-sample testing problem. More precisely, our classification model is a generic framework that is composed of two steps. In the first step, the distance between the test instance and each training instance is calculated to derive two distance sets. In the second step, the two-sample test is performed under the null hypothesis that the two sets of distances are drawn from the same cumulative distribution. After these two steps, we have two p-values for each test instance and the test instance is assigned to the class associated with the smaller p-value. Essentially, the presented classification method can be regarded as an instance-based classifier based on hypothesis testing. The experimental results on 40 real data sets show that our method is able to achieve the same level performance as the state-of-the-art classifiers and has significantly better performance than existing testing-based classifiers. Furthermore, we can handle outlying instances and control the false discovery rate of test instances assigned to each class under the same framework.