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首页> 外文期刊>Journal of organizational computing and electronic commerce >Small Clues Tell: a Collaborative Expansion Approach for Effective Content-Based Recommendations
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Small Clues Tell: a Collaborative Expansion Approach for Effective Content-Based Recommendations

机译:小线索告诉:一种合作扩展方法,可用于有效的基于内容的建议

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摘要

ABSTRACT Content-based recommendation techniques usually require a large number of training examples for model construction, which however may not always be available in many real-world scenarios. To address the training data availability constraint common to the content-based approach, we develop a collaborative expansion-based approach to expand the size of training examples, which could lead to improved content-based recommendations. We use a book rating data set collected from Amazon to evaluate our proposed method and compare its performance against those of two salient benchmark techniques. The results show that our method outperforms the benchmark techniques consistently and significantly. Our method expands the size of training examples for a focal customer by leveraging the available preferences of his or her referent group, and thereby better supports personalized recommendations than existing techniques that solely follow content-based or collaborative filtering, without incurring costs to identify, collect, and analyze additional information. This study reveals the value and feasibility of collaborative expansion as a viable means to increase training size for the focal customer and thus address the training data availability constraint that seriously hinders the performance of content-based recommender systems.
机译:摘要基于内容的推荐技术通常需要大量的模型构造训练示例,然而,许多真实情景中不总是可用。为了解决基于内容的方法共同的培训数据可用性限制,我们开发了一种基于协作的扩展方法,以扩大培训示例的大小,这可能导致基于内容的建议。我们使用从亚马逊收集的书籍评级数据集来评估我们所提出的方法,并将其对两个突出基准技术的性能进行比较。结果表明,我们的方法优于基准技术始终如一地呈现。我们的方法通过利用他或她的参考组的可用偏好来扩展焦点客户的培训示例的大小,从而更好地支持比仅遵循基于内容或协作滤波的现有技术的个性化推荐,而不会产生成本,以识别,收集,并分析其他信息。本研究揭示了协同扩展作为增加焦点客户培训规模的可行方法的价值和可行性,从而解决了严重阻碍了基于内容的推荐系统的培训的培训数据可用性约束。

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