Tell Me What You Want: Embedding Narratives for Movie Recommendations

Lukas Eberhard, Simon Walk, D. Helic
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引用次数: 1

Abstract

Recommender systems are efficient exploration tools providing their users with valuable suggestions about items, such as products or movies. However, in scenarios where users have more specific ideas about what they are looking for (e.g., they provide describing narratives, such as "Movies with minimal story, but incredible atmosphere, such as No Country for Old Men"), traditional recommender systems struggle to provide relevant suggestions. In this paper, we study this problem by investigating a large collection of such narratives from the movie domain. We start by empirically analyzing a dataset containing free-text narratives representing movie suggestion requests from reddit users as well as community suggestions to those requests. We find that community suggestions are frequently more diverse than requests, making a recommendation task a challenging one. In a prediction experiment, we use embedding algorithms to assess the importance of request features including movie descriptions, genres, and plot keywords, by computing recommendations. Our findings suggest that, in our dataset, positive movies and keywords have the strongest, whereas negative movie features have the weakest predictive power. We strongly believe that our new insights into narratives for recommender systems represent an important stepping stone towards novel applications, such as interactive recommender applications.
告诉我你想要什么:为电影推荐嵌入叙事
推荐系统是有效的探索工具,为用户提供关于产品或电影等项目的有价值的建议。然而,在用户对他们正在寻找的东西有更具体的想法的场景中(例如,他们提供描述性叙述,例如“故事最少,但氛围令人难以置信的电影,例如《老无所归》),传统的推荐系统很难提供相关的建议。在本文中,我们通过调查来自电影领域的大量此类叙事来研究这个问题。我们首先对一个数据集进行实证分析,该数据集包含来自reddit用户的电影建议请求以及社区对这些请求的建议的自由文本叙述。我们发现社区建议往往比请求更多样化,这使得推荐任务更具挑战性。在预测实验中,我们使用嵌入算法通过计算推荐来评估请求特征的重要性,包括电影描述、类型和情节关键词。我们的研究结果表明,在我们的数据集中,正面电影和关键词的预测能力最强,而负面电影特征的预测能力最弱。我们坚信,我们对推荐系统叙述的新见解是迈向交互式推荐应用等新应用的重要垫脚石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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