학술논문

Evolutionary TBL template generation
Document Type
article
Source
Journal of the Brazilian Computer Society. December 2007 13(4)
Subject
Machine Learning
Genetic Algorithms
Transformation Error-Driven Based Learning
Language
English
ISSN
0104-6500
Abstract
Transformation Based Learning (TBL) is a Machine Learning technique frequently used in some Natural Language Processing (NLP) tasks. TBL uses rule templates to identify error-correcting patterns. A critical requirement in TBL is the availability of a problem domain expert to build these rule templates. In this work, we propose an evolutionary approach based on Genetic Algorithms to automatically implement the template generation process. Additionally, we report our findings on five experiments with useful NLP tasks. We observe that our approach provides template sets with a mean loss of performance of 0.5% when compared to human built templates