Automatic recommendations and pricing system for computing devices

Mohamed Refaat Mohaned Abdellah, Hossam Gamal, Asaad Hassan
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Abstract

: Recommendation systems play a crucial role in modern information retrieval, e-commerce, and personalized content delivery. This paper provides a comprehensive review of recommendation systems, covering key concepts, methodologies, and applications. It examines different types of recommendation algorithms, including collaborative filtering, content-based filtering, and hybrid approaches, along with evaluation metrics and challenges. Our automatic recommendations and pricing system application aimed at assisting users in selecting and purchasing the optimal PC or laptop aligns with the modern demand for streamlined technology decisions. This innovative app serves as a comprehensive tool, harnessing user input to curate personalized recommendations while offering access to an extensive database of computer products. Our main contribution is improving the traditional collaborative filtering approach with a novel weighting scheme. We introduce a dynamic weighting mechanism that considers the recency and relevance of interactions to improve the accuracy and personalization of recommendations. Our recommendation systems platform, implementing a novel weighting scheme, observed a 20% increase in click-through rates (CTR) due to more relevant product recommendations. The paper also discusses emerging upcoming patterns and directions in recommendation system research.
计算机设备的自动推荐和定价系统
:推荐系统在现代信息检索、电子商务和个性化内容交付中发挥着至关重要的作用。本文全面回顾了推荐系统,涵盖了关键概念、方法和应用。它研究了不同类型的推荐算法,包括协同过滤、基于内容的过滤和混合方法,以及评估指标和挑战。我们的自动推荐和定价系统应用程序旨在帮助用户选择和购买最佳的个人电脑或笔记本电脑,符合现代人对简化技术决策的需求。这款创新型应用程序是一款综合工具,它利用用户的输入来策划个性化推荐,同时提供了一个庞大的计算机产品数据库。我们的主要贡献在于利用新颖的加权方案改进了传统的协同过滤方法。我们引入了一种动态加权机制,该机制考虑了互动的周期性和相关性,从而提高了推荐的准确性和个性化程度。我们的推荐系统平台采用了新颖的加权方案,由于相关性更强的产品推荐,点击率(CTR)提高了 20%。本文还讨论了推荐系统研究中即将出现的新模式和新方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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