评估不同策略以缓解推荐领域中的加速问题

N. Silva, Diego Carvalho, A. Pereira, Fernando Mourão, L. Rocha
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引用次数: 3

摘要

推荐系统(RSs)在电子商务领域扮演着重要的角色,影响着不同的业务阶段,例如将新用户转化为客户。完全缺乏关于新用户的信息是该领域的主要挑战之一,这在文献中被称为Ramp-up Problem。在这种情况下,选择非个性化策略是为了简单、领域独立性和有效性。最先进的策略假设,当用户资料未知时,受欢迎的项目更有可能代表有用的推荐。相比之下,其他策略认为多样化的推荐代表着吸引新用户的潜在机会。这项工作对这个问题进行了广泛的描述,以便对比现有的主要技术。我们的分析指出了受欢迎程度和多样性之间的权衡,这表明这两个方面对“快速增长”问题至关重要。然而,主要的电子商务系统坚持只提供考虑准确性的策略,优先考虑受欢迎程度而不是多样性。结果表明,的确,这两个维度都与电子商务中的这一重要场景相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Different Strategies to Mitigate the Ramp-up Problem in Recommendation Domains
Recommender Systems (RSs) have assumed a prominent role in e-commerce domains, affecting decisively distinct business phases, such as convert new users into customers. The total absence of information about new users is one of the main challenges in this area, and it is known in the literature as Ramp-up Problem. In this scenario, non-personalized strategy are chosen for simplicity, domain independence and effectiveness. State-of-the-art strategies assume that popular items are more likely to represent useful recommendations when the user profile is not known. In contrast, other strategies consider that diversifying recommendations represents potential chances of attracting new users. This work performs an extensive characterization of this problem, in order to contrast the main existing techniques. Our analyses point to a trade-off of popularity and diversity, suggesting that these two dimensions are essential to the Ramp-up problem. However, the main e-commerce systems insist on presenting only strategies that consider accuracy, prioritizing popularity over diversity. The results show that, indeed, both dimensions are relevant to this important scenario in e-commerce.
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