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arxiv: 1801.04554 · v1 · pith:FZDMPNTX · submitted 2018-01-14 · cs.IR · cs.CL· cs.LG

DCDistance: A Supervised Text Document Feature extraction based on class labels

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classification cs.IR cs.CLcs.LG
keywords documentextractionfeaturesalgorithmalgorithmsclasscreatesdata
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Text Mining is a field that aims at extracting information from textual data. One of the challenges of such field of study comes from the pre-processing stage in which a vector (and structured) representation should be extracted from unstructured data. The common extraction creates large and sparse vectors representing the importance of each term to a document. As such, this usually leads to the curse-of-dimensionality that plagues most machine learning algorithms. To cope with this issue, in this paper we propose a new supervised feature extraction and reduction algorithm, named DCDistance, that creates features based on the distance between a document to a representative of each class label. As such, the proposed technique can reduce the features set in more than 99% of the original set. Additionally, this algorithm was also capable of improving the classification accuracy over a set of benchmark datasets when compared to traditional and state-of-the-art features selection algorithms.

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