【專題演講】9月28日(一)花文妤博士 (Machine Learning Scientist at Amazon)

2020-09-28 09:40:40
  • 時間地點:9月28日(一)16:00-16:40 本系A210教室
  • 講者:花文妤博士 (Machine Learning Scientist at Amazon)
  • 講題:Similarity Recommendation based on the Attention Mechanism
  • 摘要:Item-to-item similarity has been long used for building recommender systems in industrial settings, owing to its interpretability and real-time computational productivity. In this work, we have developed a new embedding representation to the similarity-based recommendation system. The proposed solution enhances the information to both text embedding and image embedding. First of all, we have successfully improved the text embedding in two ways: 1) add item description and bullet points on top of the title along with some key attributes to enlarge the text information; 2) apply topic modeling on the description and bullet points to get key topics and keywords, and compare the performance between Word2Vec model and pre-trained fine-tuned Bidirectional Encoder Representations from Transformers (BERT) model on the text attributes. Moreover, we have tested product image embeddings with different settings and compare the performance with two settings: 1) apply max-pooling on a ResNet50 with triplet loss model to get 205-dimension embeddings; 2) apply PCA on the same ResNet50 model to reduce the dimension. Based on the experiment results with different text and image embeddings, we propose a better solution which outperforms the baseline result [1] with increased 20% precision on a fixed recall (0.05). The contribution of this work includes 1) the most comprehensive ASIN catalog information to the text model is used; 2) the best combination of text and image embedding is found. The result shows smaller distance in terms of k-nearest neighbors (KNN) Euclidean measurement and significant precision increased on a down-stream click and purchase task; 3) this framework is not limited to a specific use case, and can be easily adapted to different product categories and marketplaces.

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