Dating and romantic relationships not only play a huge role in our personal lives but also collectively influence and shape society. Today, many romantic partnerships originate from the Internet, signifying the importance of technology and the web in modern dating. In this paper, we present a text-based computational approach for estimating the relationship compatibility of two users on social media. Unlike many previous works that propose reciprocal recommender systems for online dating websites, we devise a distant supervision heuristic to obtain real world couples from social platforms such as Twitter. Our approach, the CoupleNet is an end-to-end deep learning based estimator that analyzes the social profiles of two users and subsequently performs a similarity match between the users. Intuitively, our approach performs both user profiling and match-making within a unified end-to-end framework. CoupleNet utilizes hierarchical recurrent neural models for learning representations of user profiles and subsequently coupled attention mechanisms to fuse information aggregated from two users. To the best of our knowledge, our approach is the first data-driven deep learning approach for our novel relationship recommendation problem. We benchmark our CoupleNet against several machine learning and deep learning baselines. Experimental results show that our approach outperforms all approaches significantly in terms of precision. Qualitative analysis shows that our model is capable of also producing explainable results to users.
翻译:约会和浪漫关系不仅在我们个人生活中发挥着巨大的作用,而且集体地影响和塑造社会。今天,许多浪漫伙伴关系来自互联网,表明技术和网络在现代约会中的重要性。在本文中,我们提出了一个基于文本的计算方法,用以估计社交媒体上两个用户之间的关系兼容性。与以前许多提议在线约会网站相互推荐系统的工程不同,我们设计了一种遥远的监管偏执主义,以便从Twitter等社会平台获取真实的世界夫妇。我们的方法,即PaupleNet是一个基于端到端的深层次学习的估算器,它分析两个用户的社会概况,然后在用户之间进行类似的对比。我们的方法直观地在统一的终端到端的框架内进行用户概况和匹配。联线网络使用分级的反复神经模型来学习用户概况的表述,然后将关注机制结合起来,从两个用户收集的信息。根据我们的知识,我们的方法是第一个以数据驱动的深层次学习方法解决我们的新式关系建议问题。我们用几个机器学习和深层次学习基准来测量我们的联网,我们的方法是比对两个用户进行对比。实验结果的精确性分析也显示我们所有方法的精确性分析结果。