Classifications, evaluation metrics, datasets, and domains in recommendation services: A survey

Luong Vuong Nguyen
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Abstract

Recommendation systems (RS) play a crucial role in assisting individuals in making suitable selections from an extensive array of products or services. This significantly mitigates the predicament of being overwhelmed by excessive information. RS finds powerful utility in online industries by vending products over the internet or furnishing online services. Given the potential for business expansion through their implementation, RS is relevant in such domains. This comprehensive review article overviews RS and its diverse variations and extensions. Specifically, this review provides a thorough comparative analysis for each method that encompasses many techniques employed in RS, encompassing content-based filtering, collaborative filtering, hybrid, and miscellaneous approaches. Notably, the article delves into the manifold applications of RS across various practical domains. Additionally, the assortment of evaluation metrics utilized across RS is explored. Finally, we conclude by encapsulating the distinct challenges RS encounters, which enhance their precision and dependability.
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推荐服务中的分类、评估指标、数据集和领域:调查
推荐系统(RS)在帮助个人从大量产品或服务中做出适当选择方面发挥着至关重要的作用。这大大缓解了被过多信息淹没的困境。通过在互联网上销售产品或提供在线服务,RS 在在线行业中发挥着强大的作用。鉴于其实施具有业务扩展的潜力,RS 在这些领域具有重要意义。这篇综合评论文章概述了 RS 及其各种变体和扩展。具体来说,本综述对每种方法进行了全面的比较分析,其中包括 RS 中采用的多种技术,包括基于内容的过滤、协同过滤、混合过滤和其他方法。值得注意的是,文章深入探讨了 RS 在各个实际领域的多方面应用。此外,文章还探讨了在 RS 中使用的各种评价指标。最后,我们总结了 RS 遇到的不同挑战,这些挑战提高了 RS 的精度和可靠性。
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