Tsallis Mutual Information for Document Classification

oleh: Màrius Vila, Mateu Sbert, Anton Bardera, Miquel Feixas

Format: Article
Diterbitkan: MDPI AG 2011-09-01

Deskripsi

Mutual information is one of the mostly used measures for evaluating image similarity. In this paper, we investigate the application of three different Tsallis-based generalizations of mutual information to analyze the similarity between scanned documents. These three generalizations derive from the Kullback–Leibler distance, the difference between entropy and conditional entropy, and the Jensen–Tsallis divergence, respectively. In addition, the ratio between these measures and the Tsallis joint entropy is analyzed. The performance of all these measures is studied for different entropic indexes in the context of document classification and registration.