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Verb Tense Classification And Automatic Exercise Generation

Published:16 October 2018Publication History

ABSTRACT

This paper describes a system developed for verb tenses classification in the English language and automatic generation of verb-tenses-oriented exercises, based on texts for study chosen by the user. The classification rules were analyzed iteratively. This research brings a method for generation of exercises of transposition of verb tenses. By this method, it is possible to transpose each verb tense on a sentence to another verb tense. The verb tenses transposition method can also be applied in other contexts, making it easy to choose an action (verb) and applying it to verb tense.

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  1. Verb Tense Classification And Automatic Exercise Generation

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      • Published in

        cover image ACM Other conferences
        WebMedia '18: Proceedings of the 24th Brazilian Symposium on Multimedia and the Web
        October 2018
        437 pages
        ISBN:9781450358675
        DOI:10.1145/3243082

        Copyright © 2018 ACM

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        Association for Computing Machinery

        New York, NY, United States

        Publication History

        • Published: 16 October 2018

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        • short-paper
        • Research
        • Refereed limited

        Acceptance Rates

        WebMedia '18 Paper Acceptance Rate37of111submissions,33%Overall Acceptance Rate270of873submissions,31%

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