MURAGAKI Yoshihiro
Department School of Medicine(Tokyo Women's Medical University Hospital), School of Medicine Position Visiting Professor |
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Language | Japanese |
Title | A Factor Analysis Technique Using Correlation Analysis to Extract Features Contributing to Prediction by Machine Learning |
Conference Type | Nationwide Conferences |
Presentation Type | Speech |
Lecture Type | General |
Date | 2018/06/22 |
Society abstract | 医療情報学 38(6),351-357 2019 日本医療情報学会春季学術大会プログラム・抄録集 54-55 |
Summary | Over the last half century, a number of new learning methods have been developed, including SVMs and deep neural networks. These are very accurate, but unfortunately they also lack explainability. In particular, deep neural networks provide no information about the importance of feature variables. High explainability is expected to guarantee the reliability of prediction models made by learning methods other than the evaluation of prediction accuracy. To address this problem, we have developed a factor analysis technique for nonlinear machine learning methods. The technique has two statistical steps as follows. The first step, called backward analysis, generates probability distributions of the positive and negative classes estimated by the prediction model. The second step uses backward elimination based on Hilbert-Schmidt independence criteria to extract features for which there is a nonlinear correlation between the feature variables and outcome. This factor analysis technique was verified by simulation. In the experiment, we extracted new factors that are relevant to prostate cancer from the feature variables of gene expression data. Experimental results show that this technique has the potential to play a vital role in clinical research. |