A Novel Framework on Book-Recommendation System

Harsh Kumar Singh, Prof. Manisha Pathak, Prof. Manish Dixit
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Abstract

With so many books available these days, effective book recommendation engines are crucial to pointing readers in the direction of choices that suit their interests. This paper introduces a prediction algorithm that uses user ratings to improve book recommendations. The program attempts to precisely forecast and rank the top 50 books for specific users by examining user-provided book ratings. The research methodology utilized in this study generates tailored recommendations by combining machine learning algorithms with collaborative filtering techniques. In order to provide predictions, collaborative filtering looks for trends in user behavior and preferences and compares users and books. To be more precise, the model finds books that people with similar preferences have liked by using similarity measures and user-item matrices. The effectiveness of the predictive model is evaluated using a sizable dataset of user-rated novels. The model is guaranteed to be resilient and adaptable to a large range of literary interests due to the dataset's broad scope in terms of genres, authors, and publishing years. Recall, accuracy, and precision are among the performance metrics used to assess how well the model can recommend books to readers based on their interests. The predictive model's ability to produce individualized book recommendations based on user ratings is demonstrated by the results. The model's prediction of the top 50 books is highly relevant and aligned with users' likes, which improves readers' browsing and selecting experience. The concept also exhibits scalability and flexibility, making it possible to accommodate growing book catalogs and changing customer preferences. All things considered, this work advances book recommendation systems by introducing a predictive model that uses user ratings to produce tailored recommendations. The approach improves reading enjoyment and encourages readers to become more deeply involved with books by making it easier for them to find interesting and engaging literary content..
图书推荐系统的新框架
如今,图书种类繁多,有效的图书推荐引擎对于引导读者选择适合自己兴趣的图书至关重要。本文介绍了一种利用用户评分来改进图书推荐的预测算法。该程序试图通过研究用户提供的图书评分,为特定用户精确预测并排列出前 50 本图书。本研究采用的研究方法将机器学习算法与协同过滤技术相结合,生成量身定制的推荐。为了提供预测,协同过滤技术会寻找用户行为和偏好的趋势,并对用户和图书进行比较。更准确地说,该模型通过使用相似性度量和用户-项目矩阵,找到具有相似偏好的人所喜欢的书籍。预测模型的有效性是通过一个相当大的用户评价小说数据集来评估的。由于该数据集在流派、作者和出版年份方面范围广泛,因此保证了该模型的弹性和适应性,能够适应大量的文学兴趣。召回率、准确率和精确率是用来评估该模型根据读者兴趣向其推荐图书的性能指标。结果表明,预测模型能够根据用户的评分进行个性化的图书推荐。该模型预测的前 50 本图书与用户的喜好高度相关和一致,从而改善了读者的浏览和选择体验。这一概念还具有可扩展性和灵活性,可以适应不断增长的图书目录和不断变化的客户偏好。综上所述,这项工作通过引入一个预测模型,利用用户评分来生成量身定制的推荐,推动了图书推荐系统的发展。这种方法提高了读者的阅读乐趣,使他们更容易找到有趣、引人入胜的文学内容,从而鼓励他们更深入地阅读书籍。
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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