使用协同过滤和基于内容的过滤混合技术改进推荐系统

Riya Widayanti
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引用次数: 2

摘要

这项创新的研究通过协同过滤(CF)和基于内容的过滤(CBF)技术的协同集成,引入了一种新的推荐系统增强方法,称为混合CF-CBF方法。通过无缝整合CF的用户交互洞察力和CBF的内容分析能力,这种方法开创了一种更精细和个性化的推荐范例。研究包括全面的数据采集、高效的存储管理、细致的数据细化以及CF和CBF方法的熟练应用。研究结果显著突出了混合方法在产生建议方面的威力,这些建议表现出更高的多样性和准确性,超过了单独使用任何一种技术所获得的结果。值得注意的是,混合CF-CBF方法有效地解决了单个方法固有的缺点,例如CF容易受到“冷启动”问题的影响,以及CBF在促进推荐多样性方面的局限性。通过培养和谐的协同作用,这种新颖的方法超越了这些限制,并提供了一个整体的解决方案。此外,CF和CBF的相互作用增强了推荐系统对用户偏好的认知把握,从而丰富了所提供推荐的质量。总之,这项研究通过支持混合CF-CBF方法,为推荐系统的发展做出了开创性的贡献。通过巧妙地融合两种不同的技术,该研究在个性化推荐方面取得了突破,从而推动了更复杂、更有效的推荐系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Recommender Systems using Hybrid Techniques of Collaborative Filtering and Content-Based Filtering
This innovative study introduces a novel enhancement to recommendation systems through a synergistic integration of Collaborative Filtering (CF) and Content-Based Filtering (CBF) techniques, termed the hybrid CF-CBF approach. By seamlessly amalgamating the strengths of CF's user interaction insights and CBF's content analysis prowess, this approach pioneers a more refined and personalized recommendation paradigm. The research encompassed meticulous phases, including comprehensive data acquisition, efficient storage management, meticulous data refinement, and the skillful application of CF and CBF methodologies. The findings markedly highlight the prowess of the hybrid approach in generating recommendations that exhibit enhanced diversity and precision, surpassing the outcomes obtained from either technique in isolation. Remarkably, the hybrid CF-CBF approach effectively addresses the inherent shortcomings of individual methods, such as CF's vulnerability to the "cold start" problem and CBF's limitation in fostering recommendation diversity. By fostering a harmonious synergy, this novel approach transcends these limitations and provides a holistic solution. Furthermore, the interplay of CF and CBF augments the recommender system's cognitive grasp of user preferences, subsequently enriching the quality of recommendations provided. In conclusion, this research stands as a pioneering contribution to the evolution of recommendation systems by championing the hybrid CF-CBF approach. By ingeniously fusing two distinct techniques, the study engenders a breakthrough in personalized recommendations, thereby propelling the advancement of more sophisticated and effective recommendation systems.
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