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Content Based Recommender System using Transfer Learning

Identifying products a specific customer likes most can significantly increase the earnings of a company. For that purpose, a neural network classifier is used as a data-driven, visually-aware feature extractor. The latter then serves as input for similarity-based recommendations using a ranking algorithm. Combined with more traditional content-based recommendation systems, image-based recommendations can help to increase robustness and performance, for example, by better matching a particular customer style. In this hack session, learn how to build content based recommender systems using image data.

Key Takeaways:

Understanding of Recommender Systems

  • Collaborative Systems.
  • Content Based Recommender Systems.
  • Deep Learning Algorithms for Unsupervised Computer Vision

Convolutional Neural Networks (Convolution, MaxPooling, BatchNorm)

  • Transfer Learning for CNN Architectures
  • Inception Models
  • RESNET Models
  • VGG Models

Understanding Similarity Measures

  • Euclidean Distance measures
  • Cosine Similarity measures

Building an End to End Content Based Recommender System

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