Avtor/Urednik     Mladenić, Dunja; Grobelnik, Marko
Naslov     Word sequences as features in text-learning
Tip     članek
Vir     In: Zajc B, editor. Zbornik 7. elektrotehniške in računalniške konference ERK'98. Zvezek B. Računalništvo in informatika, umetna inteligenca, robotika, razpoznavanje vzorcev, biomedicinska tehnika, močnostna elektrotehnika, didaktika, študentski članki; 1998 sep 24-26; Portorož. Ljubljana: Slovenska sekcija IEEE,
Leto izdaje     1998
Obseg     str. 145-8
Jezik     eng
Abstrakt     This paper proposes an efficient algorithm for the generation of new features that enrich the known bagof-words document representation. New features are generated based on word sequences of different length. Learning is performed using Naive Bayesian classifier on feature-vectors, where only highly scored features are used. THe performance of enriched document representation is evaluated onthe problem of automatic document categorization using Yahoo text hierarchy. Our experiments show that using word sequences of length up to 3 instead of using only single words improves the performance, while longer sequences in average have no influence to the performance.
Deskriptorji     LEARNING
ARTIFICIAL INTELLIGENCE
ALGORITHMS