Fitness assessment of document model


Autoria(s): Chen, Ding-Yi; Li, Xue; Dong, Zhao Yang; Chen, Xia
Contribuinte(s)

P. Fleming

Data(s)

01/01/2006

Resumo

Document classification is a supervised machine learning process, where predefined category labels are assigned to documents based on the hypothesis derived from training set of labelled documents. Documents cannot be directly interpreted by a computer system unless they have been modelled as a collection of computable features. Rogati and Yang [M. Rogati and Y. Yang, Resource selection for domain-specific cross-lingual IR, in SIGIR 2004: Proceedings of the 27th annual international conference on Research and Development in Information Retrieval, ACM Press, Sheffied: United Kingdom, pp. 154-161.] pointed out that the effectiveness of document classification system may vary in different domains. This implies that the quality of document model contributes to the effectiveness of document classification. Conventionally, model evaluation is accomplished by comparing the effectiveness scores of classifiers on model candidates. However, this kind of evaluation methods may encounter either under-fitting or over-fitting problems, because the effectiveness scores are restricted by the learning capacities of classifiers. We propose a model fitness evaluation method to determine whether a model is sufficient to distinguish positive and negative instances while still competent to provide satisfactory effectiveness with a small feature subset. Our experiments demonstrated how the fitness of models are assessed. The results of our work contribute to the researches of feature selection, dimensionality reduction and document classification.

Identificador

http://espace.library.uq.edu.au/view/UQ:80096

Idioma(s)

eng

Publicador

Taylor & Francis Ltd

Palavras-Chave #Document Classification #Document Model #Fitness Measurement #Automation & Control Systems #Computer Science, Theory & Methods #Operations Research & Management Science #Text Categorization #C1 #290901 Electrical Engineering #660301 Electricity transmission
Tipo

Journal Article