研究论文:探索推荐系统的前景:技术与方法的比较分析

Garvit Sharma, Karthik Pragada, Poushali Deb Purkayastha, Yukta Vajpayee
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引用次数: 0

摘要

自 1979 年第一位基于计算机的图书管理员 Grundy 诞生以来,推荐系统领域经历了深刻的演变。推荐系统从最初的不起眼到如今已与日常生活的方方面面密不可分,尤其是在电子商务领域,这要归功于亚马逊在 20 世纪 90 年代末推出的协同过滤技术。这促使推荐系统被广泛应用于各个领域,并引发了大量的研究兴趣和投资,Netflix 在 2006 年举办的著名推荐系统竞赛就是一个很好的例子。如今,推荐系统采用了多种技术,如混合过滤、基于内容的过滤、人口统计过滤和协作过滤,以满足娱乐、教育和医疗保健等行业的个性化信息需求。此外,基于知识、风险意识、社交网络和情境意识等新兴类型的推荐系统进一步拓宽了其适用范围,满足了特定用户的需求和偏好。利用大数据上的机器学习和人工智能算法,推荐系统已成为大数据分析的典型应用,在电子学习、旅游和新闻传播等领域增强了用户体验和参与度。然而,由于输入数据呈指数级增长,扩展推荐系统面临着挑战,因此需要采用降维和基于集群的方法等策略。整合多种推荐算法增加了系统的复杂性,需要仔细考虑算法选择、性能监控和维护。在复杂的系统中,透明度和解释机制对促进用户信任和理解至关重要。尽管面临挑战,推荐系统仍在继续推动创新,提供个性化推荐,丰富各领域的用户体验。
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Research Paper on Exploring the Landscape of Recommendation Systems: A Comparative Analysis of Techniques and Approaches
The field of recommendation systems has witnessed a profound evolution since its inception with Grundy, the first computer-based librarian, in 1979. From its humble beginnings, recommendation systems have become integral to various facets of daily life, particularly in e-commerce, thanks to breakthroughs like Amazon’s Collaborative Filtering in the late 1990s. This led to widespread adoption across diverse sectors, prompting significant research interest and investment, exemplified by Netflix’s renowned recommendation system contest in 2006. Today, recommendation systems employ various techniques such as Hybrid Filtering, Content-Based Filtering, Demographic Filtering, and Collaborative Filtering catering to personalized information needs across industries like entertainment, education, and healthcare. Moreover, emerging types of recommendation systems, including Knowledge-Based, RiskAware, Social-Networking, and Context-Aware, further broaden their applicability, addressing specific user needs and preferences. Leveraging machine learning and AI algorithms on big data, recommendation systems have become a quintessential application of big data analytics, enhancing user experience and engagement in domains like e-learning, tourism, and news dissemination. However, scaling recommendation systems present challenges due to the exponential growth of input data, necessitating strategies like Dimensionality Reduction and cluster-based methods. Integrating multiple recommendation algorithms enhances system complexity, requiring careful consideration of algorithm selection, performance monitoring, and maintenance. Transparency and explanation mechanisms become crucial in complex systems to foster user trust and understanding. Despite challenges, recommendation systems continue to drive innovation, delivering personalized recommendations and enriching user experiences across various domains.
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