We introduce a novel domain-independent algorithm for generating interesting item-to-item textual connections, or segues. Pivotal to our contribution is the introduction of a scoring function for segues, based on their "interestingness". We provide an implementation of our algorithm in the music domain. We refer to our implementation as Dave. Dave is able to generate 1553 different types of segues, that can be broadly categorized as either informative or funny. We evaluate Dave by comparing it against a curated source of song-to-song segues, called The Chain. In the case of informative segues, we find that Dave can produce segues of the same quality, if not better, than those to be found in The Chain. And, we report positive correlation between the values produced by our scoring function and human perceptions of segue quality. The results highlight the validity of our method, and open future directions in the application of segues to recommender systems research.
翻译:我们引入了一种新的域独立算法,以产生有趣的项目到项目文本连接,或者言语。我们的贡献的要点是引入一个评分功能,以“兴趣”为基础。我们在音乐领域提供我们算法的实施。我们称之为Dave。Dave能够产生1553种不同类型的精选,可以广泛归类为信息性或幽默性。我们通过比较Dave来评价它,把它与“链子”的曲调来源相比较。在信息性精选中,我们发现Dave可以产生质量相同(如果不是更好的话)的精选功能。我们报告我们评分功能产生的值与人类对精选质量的看法之间的正相关关系。结果突出了我们的方法的有效性,以及在应用精选系统研究时开放的未来方向。