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Uncover Sexual Harassment Patterns from Personal Stories by Joint Key Element Extraction and Categorization

机译:通过联合关键元素提取和分类从个人故事中发现性骚扰模式

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The number of personal stories about sexual harassment shared online has increased exponentially in recent years. This is in part inspired by the #MeToo and #TimesUp movements. Safecity is an online forum for people who experienced or witnessed sexual harassment to share their personal experiences. It has collected > 10,000 stories so far. Sexual harassment occurred in a variety of situations, and categorization of the stories and extraction of their key elements will provide great help for the related parties to understand and address sexual harassment. In this study, we manually annotated those stories with labels in the dimensions of location, time, and harassers' characteristics, and marked the key elements related to these dimensions. Furthermore, we applied natural language processing technologies with joint learning schemes to automatically categorize these stories in those dimensions and extract key elements at the same time. We also uncovered significant patterns from the categorized sexual harassment stories. We believe our annotated data set, proposed algorithms, and analysis will help people who have been harassed, authorities, researchers and other related parties in various ways, such as automatically filling reports, enlightening the public in order to prevent future harassment, and enabling more effective, faster action to be taken.
机译:近年来,在线分享的有关性骚扰的个人故事数量呈指数增长。这部分受#MeToo和#TimesUp运动的启发。安全城市(Safecity)是一个在线论坛,供经历过或目睹性骚扰的人分享他们的个人经验。到目前为止,它已经收集了超过10,000个故事。性骚扰发生在各种情况下,故事的分类和关键要素的提取将为有关各方了解和解决性骚扰提供很大的帮助。在这项研究中,我们用位置,时间和骚扰者特征的维度手动标记了这些故事,并标记了与这些维度相关的关键元素。此外,我们将自然语言处理技术与联合学习方案结合使用,可以自动将这些故事按这些维度分类,并同时提取关键要素。我们还从分类的性骚扰故事中发现了重要的模式。我们相信,我们带注释的数据集,拟议的算法和分析将以各种方式(例如自动填写报告,启发公众以防止将来受到骚扰,并为更多人提供帮助)以各种方式帮助遭受骚扰的人,当局,研究人员和其他相关方。有效,更快的行动。

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