Research on House Recommendation Model Based on Cosine Similarity in Deep Learning Mode in Grid Environment

Feng Liu, Weiwei Guo
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引用次数: 3

Abstract

Aiming at the current number of recommended models in the house recommendation system model, the recommendation accuracy and user satisfaction do not meet the needs of users, this paper proposes a house recommendation model based on cosine similarity in the deep learning mode in grid environment. The model first uses the established grid environment, combined with the deep learning mode, through the collection of a large number of housing basic data samples and user feedback information, establishes a mathematical model of housing recommendation, and then integrates the cosine similarity into the recommendation model, through training and parameters. Adjust the model framework gradually. Finally, through the derivation and verification of the simulation experiment, the proposed recommendation model can efficiently recommend the housing information that meets the requirements for the user, and improve the recommendation accuracy and user satisfaction.
网格环境下深度学习模式下基于余弦相似度的房屋推荐模型研究
针对目前房屋推荐系统模型中推荐模型众多,推荐精度和用户满意度不能满足用户需求的问题,本文提出了网格环境下深度学习模式下基于余弦相似度的房屋推荐模型。该模型首先利用已建立的网格环境,结合深度学习模式,通过收集大量住房基础数据样本和用户反馈信息,建立住房推荐的数学模型,然后将余弦相似度整合到推荐模型中,通过训练和参数化。逐步调整模型框架。最后,通过仿真实验的推导和验证,所提出的推荐模型能够有效地为用户推荐符合要求的房屋信息,提高了推荐的准确率和用户满意度。
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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