Alignment of Custom Standards by Machine Learning Algorithms

Alignment of Custom Standards by Machine Learning Algorithms

Sirbu, Adela;Diosan, Laura;Rogozan, Alexandrina;Pecuchet, Jean-Pierre;
studia universitatis babes-bolyai: series informatica 2010 Vol. 55 pp. 25-36
287
sirbu2010alignmentstudia

Abstract

Building an efficient model for automatic alignment of terminologies would bring a significant improvement to the information retrieval process. We have developed and compared two machine learning based algorithms whose aim is to align 2 custom standards built on a 3 level taxonomy, using kNN and SVM classifiers that work on a vector representation consisting of several similarity measures. The weights utilized by the kNN were optimized with an evolutionary algorithm, while the SVM classifier's hyper-parameters were optimized with a grid search algorithm. The database used for train was semi automatically obtained by using the Coma++ tool. The performance of our aligners is shown by the results obtained on the test set.

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