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Product Recommendation System with Explicit Feedback Using Deep Learning Methods

机译:使用深度学习方法的具有明确反馈的产品推荐系统

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Today, efforts are made to develop and improve recommendation systems that will direct users to the right product according to their individual preferences during internet shopping. In this study, the recommendation system was designed with Autoencoders, which are one of the methods of deep learning and MovieLens dataset. While designing the system, various optimization algorithms, namely Gradient Descent, Gradient Descent with Momentum, RmsProp and Adam (Adaptive Momentum Optimization), were tried by using TensorFlow in the Python programming language. Moreover, the effect of increasing the amount of the data on the optimization algorithm was analyzed. Consequently, it was effectively demonstrated that the most successful one was the Adam algorithm with a test error of 1.363. It was also observed that decreasing the sparsity on the training data leads to a lower test error.
机译:如今,人们正在努力开发和改进推荐系统,该系统将在网上购物期间根据用户的个人偏好将用户定向到正确的产品。在这项研究中,推荐系统是使用自动编码器设计的,这是深度学习和MovieLens数据集的方法之一。在设计系统时,通过使用Python编程语言中的TensorFlow尝试了各种优化算法,即梯度下降,具有动量的梯度下降,RmsProp和Adam(自适应动量优化)。此外,分析了增加数据量对优化算法的影响。因此,有效地证明了最成功的算法是测试误差为1.363的亚当算法。还可以观察到,减少训练数据的稀疏性可以降低测试误差。

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