Intelligent personalized content recommendations based on neural networks

HeQiang Zhou
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Abstract

To effectively assist users in discovering content tailored to their specific interests, this research aims to create an intelligent content recommendation system. The inadequacy of conventional recommendation models, which depend uniquely on historical reading data, becomes evident in their limited capacity to meet contemporary users' diverse and ever-changing preferences within the information. The proposed architecture makes the most of the advancements in deep learning technology. It integrates the self-attention mechanism, allowing for precise calibration of the significance attributed to each feature within the news data. The proposed multilevel data classification network enables a more refined and personalized knowledge of users' preferences and the array of content information attributes while incorporating the users' unique characteristics. The proposed model achieved an accuracy rate of 85.2%, a recall rate of 83.7%, an F1 score of 84.3%, and an Area Under the Curve (AUC) of 84.5%. By developing a multilevel, intelligent, personalized content recommendation network, the research attempts to introduce a solution that effectively provides users' preferences, thereby enriching their experience in discovering relevant information within the modern digital system.

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基于神经网络的智能个性化内容推荐
为了有效地帮助用户发现适合其特定兴趣的内容,本研究旨在创建一个智能内容推荐系统。传统的推荐模型独特地依赖于历史阅读数据,其不足之处在于其满足当代用户在信息中多样化和不断变化的偏好的能力有限。所提出的架构充分利用了深度学习技术的进步。它集成了自关注机制,可以精确校准新闻数据中每个特征的重要性。所提出的多级数据分类网络能够更精细和个性化地了解用户的偏好和内容信息属性,同时结合用户的独特特征。该模型的准确率为85.2%,召回率为83.7%,F1得分为84.3%,曲线下面积(AUC)为84.5%。通过开发一个多层次、智能、个性化的内容推荐网络,该研究试图引入一种有效提供用户偏好的解决方案,从而丰富了他们在现代数字系统中发现相关信息的经验。
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