PRELEARN @ EVALITA 2020:意大利语先决条件关系学习任务概述

Chiara Alzetta, Alessio Miaschi, F. Dell’Orletta, Frosina Koceva, Ilaria Torre
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引用次数: 7

摘要

前提关系学习(PRELEARN)任务是EVALITA 2020关于概念前提学习的共享任务,它包括对概念对之间的前提关系进行分类,区分前提对和非前提对。定义了四个子任务:其中两个定义了参与者在训练模型时允许使用的不同类型的特征,而另外两个定义了将对所提议的模型进行测试的分类场景。总共有3支队伍提交了14场比赛,其中包括9名个人参赛者。
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PRELEARN @ EVALITA 2020: Overview of the Prerequisite Relation Learning Task for Italian
The Prerequisite Relation Learning (PRELEARN) task is the EVALITA 2020 shared task on concept prerequisite learning, which consists of classifying prerequisite relations between pairs of concepts distinguishing between prerequisite pairs and non-prerequisite pairs. Four sub-tasks were defined: two of them define different types of features that participants are allowed to use when training their model, while the other two define the classification scenarios where the proposed models would be tested. In total, 14 runs were submitted by 3 teams comprising 9 total individual participants.
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