In the last few years, automated recommendation systems have been a major focus in the music field, where companies such as Spotify, Amazon, and Apple are competing in the ability to generate the most personalized music suggestions for their users. One of the challenges developers still fail to tackle is taking into account the psychological and emotional aspects of the music. Our goal is to find a way to integrate users' personal traits and their current emotional state into a single music recommendation system with both collaborative and content-based filtering. We seek to relate the personality and the current emotional state of the listener to the audio features in order to build an emotion-aware MRS. We compare the results both quantitatively and qualitatively to the output of the traditional MRS based on the Spotify API data to understand if our advancements make a significant impact on the quality of music recommendations.
翻译:在过去几年里,自动推荐系统一直是音乐领域的一个主要焦点,在音乐领域,Spotify、亚马逊和苹果等公司正在竞争为用户提供最个性化的音乐建议的能力。开发者仍然未能应对的挑战之一是考虑到音乐的心理和情感方面。我们的目标是找到一种方法,将用户的个人特征及其目前的情绪状态纳入一个单一的音乐建议系统,同时同时进行协作和内容过滤。我们力求将听众的个性和目前的情绪状态与音频特征联系起来,以便建立感官觉悟的MRS。我们从数量和质量上将结果与基于Spotify API数据的传统的MS产出进行比较,以便了解我们的进展是否对音乐建议的质量产生重大影响。