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Emotion-Aware Music Recommendation

机译:情绪感知音乐推荐

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摘要

Emotion is one of the major factors for users to determine service preference. Especially online music streaming services are in trend-sensitive industry, hence largely affected by user's experience and reputation. Conventional music streaming services provide users keywords-based search for music. Accordingly it strongly relies on user's prior knowledge and experience. It often fails to expose non-expert users to the music that the users are not familiar with. In this paper, we suggest an emotion-aware music recommendation system that proposes songs and artists based on the mood of each user. First, we infer user's emotion using real-time weather information. Second, we classify songs and artists which are favorable in different weather conditions. To do so, we collect and combine daily chart of K-pop music and weather history data to find the music preference in different weather. It is used to recommend timely and favorable music to users after capturing their mood implcitly. Moreover the emotion-aware music recommendation system is extensible to provide a personalized service by using user's social media, heartbeat, time, location, and so on. We expect this would enrich user experience noticeably. Being aware of user's emotion will enable broad areas of industry to provide intelligent services in a user-friendly way.
机译:情感是用户确定服务偏好的主要因素之一。尤其是在线音乐流媒体服务处于趋势敏感行业,因此很大程度上受到用户体验和声誉的影响。常规的音乐流服务向用户提供基于关键字的音乐搜索。因此,它强烈依赖于用户的先验知识和经验。它通常无法使非专业用户接触到用户不熟悉的音乐。在本文中,我们建议一种基于情感的音乐推荐系统,该系统根据每个用户的心情来推荐歌曲和歌手。首先,我们使用实时天气信息推断用户的情绪。其次,我们对在不同天气条件下有利的歌曲和艺术家进行分类。为此,我们收集并组合了K-pop音乐的每日图表和天气历史记录数据,以查找不同天气下的音乐偏好。它用于向用户隐含地捕捉他们的心情后,向他们推荐及时且有利的音乐。此外,情绪感知音乐推荐系统可扩展为通过使用用户的社交媒体,心跳,时间,位置等来提供个性化服务。我们希望这将显着丰富用户体验。意识到用户的情绪,将使广泛的行业领域以用户友好的方式提供智能服务。

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