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User Factor Adaptation for User Embedding via Multitask Learning

机译:用户因子适应通过多任务学习的用户嵌入

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Language varies across users and their interested fields in social media data: words authored by a user across his/her interests may have different meanings (e.g., cool) or sentiments (e.g., fast). However, most of the existing methods to train user embeddings ignore the variations across user interests, such as product and movie categories (e.g., drama vs. action). In this study, we treat the user interest as domains and empirically examine how the user language can vary across the user factor in three English social media datasets. We then propose a user embedding model to account for the language variability of user interests via a multitask learning framework. The model learns user language and its variations without human supervision. While existing work mainly evaluated the user embedding by extrinsic tasks, we propose an intrinsic evaluation via clustering and evaluate user embeddings by an extrinsic task, text classification. The experiments on the three English-language social media datasets show that our proposed approach can generally outperform baselines via adapting the user factor.
机译:语言在社交媒体数据中的用户及其感兴趣的字段差异:用户跨越他/她的兴趣的单词可能具有不同的含义(例如,冷却)或情绪(例如,快速)。然而,培训用户嵌入的大多数方法都忽略了用户兴趣的变化,例如产品和电影类别(例如,戏剧与动作)。在这项研究中,我们将用户兴趣视为域,并经验检查用户语言如何在三个英语社交媒体数据集中跨越用户因子而变化。然后,我们提出了一个用户嵌入模型,以通过多任务学习框架解释用户兴趣的语言变化。该模型学习用户语言及其变化而不进行人类监督。虽然现有工作主要通过外在任务评估用户嵌入用户嵌入,但我们通过集群进行内在评估,并通过外部任务,文本分类评估用户嵌入。三个英语社交媒体数据集的实验表明,我们的建议方法通常可以通过适应用户因素来优先表达基线。

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