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Rapid development of NLP modules with Memory-Based Learning


Author(s) : Sabine Buchholz Jorn Veenstra Jakub Zavrel Antal Van Den Bosch Walter Daelemans Bertjan Busser, 
Publisher : N/A
Publication Date : 1998
ISSN : N/A
Abstract : The need for software modules performing natural language processing (NLP) tasks is growing. These modules should perform efficiently and accurately, while at the same time rapid development is often mandatory. Recent work has indicated that machine learning techniques in general, and memory-based learning (MBL) in particular, offer the tools to meet both ends. We present examples of modules trained with MBL on three NLP tasks: (i) text-to-speech conversion, (ii) part-of-speech tagging, and (iii) phrase chunking. We demonstrate that the three modules display high generalization accuracy, and argue why MBL is applicable similarly well to a large class of other NLP tasks. 1.,