CMCL 2022人类阅读行为的多语言和跨语言预测共享任务

Nora Hollenstein, Emmanuele Chersoni, Cassandra L. Jacobs, Yohei Oseki, Laurent Prévot, Enrico Santus
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引用次数: 11

摘要

我们提出了认知建模与计算语言学研讨会(CMCL)关于眼动追踪数据预测的第二个共享任务。与上一版不同的是,参赛团队被要求预测多种语言的眼球追踪特征,包括一种没有可用训练数据的意外语言。此外,该任务还包括预测特征值的标准差,以解释读者之间的个体差异。共有六个队报名参加了这项任务。对于多语言预测的第一个子任务,获胜团队提出了基于词汇特征的回归模型,而对于跨语言预测的第二个子任务,获胜团队使用了基于多语言转换嵌入和统计特征的混合模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CMCL 2022 Shared Task on Multilingual and Crosslingual Prediction of Human Reading Behavior
We present the second shared task on eye-tracking data prediction of the Cognitive Modeling and Computational Linguistics Workshop (CMCL). Differently from the previous edition, participating teams are asked to predict eye-tracking features from multiple languages, including a surprise language for which there were no available training data. Moreover, the task also included the prediction of standard deviations of feature values in order to account for individual differences between readers.A total of six teams registered to the task. For the first subtask on multilingual prediction, the winning team proposed a regression model based on lexical features, while for the second subtask on cross-lingual prediction, the winning team used a hybrid model based on a multilingual transformer embeddings as well as statistical features.
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