Title
Analysis of Term Roles Along Taxonomy Nodes by Adopting Discriminant and Characteristic Capabilities.
Abstract
Taxonomies are becoming essential to a growing number of application, particularly for specific domains. Taxonomies, originally built by hand, have been recently focused on their automatic generation. In particular, a main issue on automatic taxonomy building regards the choice of the most suitable features. In this paper, we propose an analysis on how each feature changes its role along taxonomy nodes in a text categorization scenario, in which the features are the terms in textual documents. We deem that, in a hierarchical structure, each node should intuitively be represented with proper meaningful and discriminant terms (i.e., performing a feature selection task for each node), instead of considering a fixed feature space. To assess the discriminant power of a term, we adopt two novel metrics able to measure it. Our conjecture is that a term could significantly change its discriminant power (hence, its role) along the taxonomy levels. We perform experiments aimed at proving that a significant number of terms play different roles in each taxonomy node, giving emphasis to the usefulness of a distinct feature selection for each node. We assert that this analysis should support automatic taxonomy building approaches.
Year
Venue
Field
2015
IIR
Feature vector,Feature selection,Computer science,Discriminant,Artificial intelligence,Text categorization,Conjecture,Machine learning
DocType
Citations 
PageRank 
Conference
1
0.38
References 
Authors
6
3
Name
Order
Citations
PageRank
Giuliano Armano132542.89
Francesca Fanni231.14
Alessandro Giuliani317025.21