发明名称 Adaptable classification method
摘要 An adaptable classification method is provided. The method performs the classification by using a classification standard having a plurality of categories. The classification standard is classified into different categories based on probability ranges. The adaptable classification method includes training a classifying device with a plurality of samples and using the trained classifying device to determine the categories of the samples to obtain classification model scores of the samples, transferring, by using logistic-like functions, the classification model scores into probability values; and adjusting parameters of logistic-like functions to iterate the training of the classifying device such that the probability values conform to value ranges corresponding to categories of the classification standard. The adaptable classification method is applicable to various classification methods based on the probability ranges, and can also retrieve a specific category from the classified categories for further classification to increase the efficacy.
申请公布号 US9305243(B2) 申请公布日期 2016.04.05
申请号 US201313954244 申请日期 2013.07.30
申请人 National Taiwan University 发明人 Chen Argon Cheng-Kang;Chen Chiung-Nien;Kuo Wen-Hung;Chuang Shu-Chuan
分类号 G06T7/00;G06N99/00;G06K9/62 主分类号 G06T7/00
代理机构 Mintz Levin Cohn Ferris Glovsky and Popeo, P.C. 代理人 Mintz Levin Cohn Ferris Glovsky and Popeo, P.C. ;Corless Peter F.;Jensen Steven M.
主权项 1. An adaptable classification method having a classification standard of a plurality of categories that are classifiable according to probability values, the adaptable classification method comprising: (1) providing a plurality of samples to train a classifying device; (2) determining categories of the samples, by using the trained classifying device, to obtain classification model scores of the samples; (3) transferring the classification model scores into probability values by logistic-like functions having parameters, and classifying the probability values into the categories based on the classification standard; and (4) determining whether the probability values conform to value ranges corresponding to the categories of the classification standard, and stopping training the classifying device if the probability values conform to the value ranges, or adjusting the parameters of the logistic-like functions and transferring the classification model scores into new probability values by the adjusted logistic-like functions and iterating step (4) to determine whether the new probability values conform to the value ranges.
地址 Taipei TW