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AAAI 2002

Generalized Features: Their Application to Classification

Short Paper SIGART/AAAI Doctoral Consortium Artificial Intelligence

Abstract

Classification learning algorithms in general, and text classification methods in particular, tend to focus on features of individual training examples, rather than on the relationships between the examples. However, in many situations a set of items contains more information than just feature values of individual items. We propose to recognize and put in use generalized features (or set features) that describe a training example, but that depend on the dataset as a whole, with the goal of achieving better classification accuracy. In particular, we work on the integration of temporal relations into conventional word-based email classification.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
265485970521117810