Ajeesh Ramanujan
2024
Vector Embedding Solution for Recommendation System
Vidya P V
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Ajeesh Ramanujan
Proceedings of the 21st International Conference on Natural Language Processing (ICON)
We propose a vector embedding approach for recommendation systems aimed at identifying product affinities and suggesting complementary items. By capturing relationships between products, the model delivers highly relevant recommendations based on the context. A neural network is trained on purchase data to generate word embeddings, represented as a weight matrix. The resulting model predicts complementary products with top-20 and top-50 precision scores of 0.59251 and 0.29556, respectively. These embeddings effectively identify products likely to be co-purchased, enhancing the relevance and accuracy of the recommendations.