Dietary Behavior Based Food Recommender System Using Deep Learning and Clustering Techniques

Ammar Abdulsalam Al-Asadi, M. Jasim
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引用次数: 1

Abstract

Deep learning algorithms have been highly successful in various domains, including the development of collaborative filtering recommender systems. However, one of the challenges associated with deep learning-based collaborative filtering methods is that they require the involvement of all users to construct the latent representation of the input data, which is then utilized to predict the missing ratings of each user. This can be problematic as some users may have different preferences or interests, which may affect the accuracy of the prediction generation process. The research proposed a food recommender system, which tries to find users with similar dietary behavior and involve them in the recommendations generation process by combining clustering technique with denoising autoencoder to generate a rate prediction model. It is applied to “Food.com Recipes and Interactions” dataset. RMSE score was used to evaluate the performance of the proposed model which is 0.1927. It outperformed the other models that used autoencoder and denoising autoencoder without clustering where the RMSE values are 0. 4358 and 0.4354 consequently.
基于深度学习和聚类技术的饮食行为食物推荐系统
深度学习算法在各个领域都取得了很大的成功,包括协同过滤推荐系统的开发。然而,与基于深度学习的协同过滤方法相关的挑战之一是,它们需要所有用户的参与来构建输入数据的潜在表示,然后利用它来预测每个用户的缺失评级。这可能会有问题,因为一些用户可能有不同的偏好或兴趣,这可能会影响预测生成过程的准确性。本研究提出了一种食物推荐系统,通过聚类技术与去噪自编码器相结合,生成率预测模型,寻找具有相似饮食行为的用户并将其纳入推荐生成过程。它被应用于“Food.com食谱和互动”数据集。使用RMSE分数来评价所提出模型的性能,RMSE得分为0.1927。在RMSE值为0的情况下,它优于其他使用自动编码器和去噪自动编码器而不聚类的模型。4358和0.4354。
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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