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Enhancing Domain-Specific Supervised Natural Language Intent Classification with a Top-Down Selective Ensemble Model

Published version
Peer-reviewed

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Article

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Abstract

jats:pNatural Language Understanding (NLU) systems are essential components in many industry conversational artificial intelligence applications. There are strong incentives to develop a good NLU capability in such systems, both to improve the user experience and in the case of regulated industries for compliance reasons. We report on a series of experiments comparing the effects of optimizing word embeddings versus implementing a multi-classifier ensemble approach and conclude that in our case, only the latter approach leads to significant improvements. The study provides a high-level primer for developing NLU systems in regulated domains, as well as providing a specific baseline accuracy for evaluating NLU systems for financial guidance.</jats:p>

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Keywords

4605 Data Management and Data Science, 46 Information and Computing Sciences

Journal Title

Machine Learning and Knowledge Extraction

Conference Name

Journal ISSN

2504-4990
2504-4990

Volume Title

1

Publisher

MDPI AG
Sponsorship
Alan Turing Institute (EP/N510129/1)