发明名称 System and method of feature selection for text classification using subspace sampling
摘要 An improved system and method is provided for feature selection for text classification using subspace sampling. A text classifier generator may be provided for selecting a small set of features using subspace sampling from the corpus of training data to train a text classifier for using the small set of features for classification of texts. To select the small set of features, a subspace of features from the corpus of training data may be randomly sampled according to a probability distribution over the set of features where a probability may be assigned to each of the features that is proportional to the square of the Euclidean norms of the rows of left singular vectors of a matrix of the features representing the corpus of training texts. The small set of features may classify texts using only the relevant features among a very large number of training features.
申请公布号 US2009171870(A1) 申请公布日期 2009.07.02
申请号 US20070006178 申请日期 2007.12.31
申请人 YAHOO! INC. 发明人 DASGUPTA ANIRBAN;DRINEAS PETROS;HARB BOULOS;JOSIFOVSKI VANJA;MAHONEY MICHAEL WILLIAM
分类号 G06F15/18 主分类号 G06F15/18
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