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Multi-task dialog act and sentiment recognition on Mastodon

机译:Mastodon上的多任务对话行为和情感识别

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Because of license restrictions, it often becomes impossible to strictly reproduce most research results on Twitter data already a few months after the creation of the corpus. This situation worsened gradually as time passes and tweets become inaccessible. This is a critical issue for reproducible and accountable research on social media. We partly solve this challenge by annotating a new Twitter-like corpus from an alternative large social medium with licenses that are compatible with reproducible experiments: Mastodon. We manually annotate both dialogues and sentiments on this corpus, and train a multi-task hierarchical recurrent network on joint sentiment and dialog act recognition. We experimentally demonstrate that transfer learning may be efficiently achieved between both tasks, and further analyze some specific correlations between sentiments and dialogues on social media. Both the annotated corpus and deep network are released with an open-source license.
机译:由于许可证的限制,通常在创建语料库几个月后就无法在Twitter数据上严格复制大多数研究结果。随着时间的流逝,这种情况逐渐恶化,并且无法访问推文。对于在社交媒体上进行可重复且负责任的研究,这是一个关键问题。我们通过注解来自另一种大型社交媒体的类似Twitter的新语料库来部分解决此挑战,该语料库的许可与可重复的实验兼容:Mastodon。我们手动注释该语料库上的对话和情感,并在联合情感和对话行为识别上训练多任务分层递归网络。我们通过实验证明,可以在两个任务之间有效地实现迁移学习,并进一步分析社交媒体上的情感和对话之间的某些特定关联。带注解的语料库和深层网络均使用开源许可证发布。

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