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Team Phoenix at WASSA 2021: Emotion Analysis on News Stories with Pre-Trained Language Models

机译:Wassa的菲尼克斯队2021年:训练前的语言模型的新闻故事的情感分析

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Emotion is fundamental to humanity. The ability to perceive, understand and respond to social interactions in a human-like manner is one of the most desired capabilities in artificial agents, particularly in social-media bots. Over the past few years, computational understanding and detection of emotional aspects in language have been vital in advancing human-computer interaction. The WASSA Shared Task 2021 released a dataset of news-stories across two tracks, Track-1 for Empathy and Distress Prediction and Track-2 for Multi-Dimension Emotion prediction at the essay-level. We describe our system entry for the WASSA 2021 Shared Task (for both Track-1 and Track-2), where we leveraged the information from Pre-trained language models for Track specific Tasks. Our proposed models achieved an Average Pearson Score of 0.417, and a Macro-F1 Score of 0.502 in Track 1 and Track 2, respectively. In the Shared Task leaderboard, we secured 4th rank in Track 1 and 2nd rank in Track 2.
机译:情绪是人类的基础。 以人类的方式感知,理解和响应社交交互的能力是人工代理中最期望的能力之一,特别是在社交媒体机器人中。 在过去的几年中,语言中的情绪方面的计算理解和检测对于推进人机互动至关重要。 WASSA共享任务2021在两条轨道上发布了新闻故事的数据集,用于在论文级别的多维情感预测的SOMPART-1,以及Track-2。 我们描述了WASSA 2021共享任务的系统条目(对于Track-1和Track-2),我们利用预先接受预先接受的语言模型的信息进行跟踪特定任务。 我们的拟议模型实现了0.417的平均Pearson得分,以及轨道1和轨道2中的宏F1分数为0.502。 在共享任务排行榜中,我们在Track 2中的第1赛道和第2位的第4位等级。

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