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Improvising the performance of image-based recommendation system using convolution neural networks and deep learning

机译:使用卷积神经网络和深度学习提高基于图像的推荐系统的性能

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摘要

Recommendation systems now hold special significance, for in a world full of choices, order is the need of the hour. Without proper sorting, the gift of choice means nothing. The online retail world is fast-paced and ever-growing. With the exponential waning of attention span, it has become crucial to convert a casual visitor into a buyer within a limited window. Different ways can be used to do this: analysing buying patterns, surveys, user-user relationships, user-item relationships, and so on. This can be done with simple data analysis or with complex algorithms-the data must be harnessed one way or another. Deep learning is a branch of machine learning that has now become synonymous with computer vision, as these deep architectures closely emulate the biological process of vision. In this paper, the primary focus is the incorporation of a recommendation system with the visual features of products. This is done with the help of a deep architecture and a series of "convolution" operations that cause the overlapping of edges and blobs in images. We find that when the dimensionality problem has been dealt with, the features extracted serve as good quality representations of the images. Our empirical study compares the different linear and nonlinear reduction techniques on convolutional neural network features for building a recommendation model entirely based on the images.
机译:推荐系统现在拥有特殊意义,在一个充满选择的世界中,订单是每小时的需求。没有适当的排序,选择的礼物意味着什么。在线零售世界是快节奏和不断增长的。随着注意力跨度的指数衰弱,将休闲访客转换为有限窗口中的买方已经至关重要。可以使用不同的方式来执行此操作:分析购买模式,调查,用户用户关系,用户项关系等。这可以通过简单的数据分析或使用复杂的算法来完成 - 必须以某种方式利用数据。深度学习是一种机器学习的分支,现在已经成为计算机愿景的代名词,因为这些深度架构密切地模拟了视力的生物过程。在本文中,主要重点是通过产品的视觉特征纳入推荐系统。这是在深度建筑的帮助下完成的,并一系列“卷积”操作,导致图像中的边缘和Blob的重叠。我们发现,当已经处理了维度问题时,提取的特征充当图像的质量良好。我们的实证研究比较了基于图像的建立推荐模型的卷积神经网络特征的不同线性和非线性减少技术。

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