Deep Neural Network and Boosting Based Hybrid Quality Ranking for e-Commerce Product Search

被引:1
|
作者
Jbene, Mourad [1 ]
Tigani, Smail [1 ]
Saadane, Rachid [2 ]
Chehri, Abdellah [3 ]
机构
[1] Euro Mediterranean Univ, Euromed Res Ctr, Engn Unit, Fes 51, Morocco
[2] EHTP, Elect & Telecommun Engn Dept, SIRC LAGeS EHTP, BP 8108, Casablanca, Morocco
[3] Univ Quebec Chicoutimi, Appl Sci Dept, Chicoutimi, PQ G7H 2B1, Canada
关键词
deep learning; sentiment analysis; information retrieval; Learning to Rank; e-commerce; search engines;
D O I
10.3390/bdcc5030035
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In the age of information overload, customers are overwhelmed with the number of products available for sale. Search engines try to overcome this issue by filtering relevant items to the users' queries. Traditional search engines rely on the exact match of terms in the query and product meta-data. Recently, deep learning-based approaches grabbed more attention by outperforming traditional methods in many circumstances. In this work, we involve the power of embeddings to solve the challenging task of optimizing product search engines in e-commerce. This work proposes an e-commerce product search engine based on a similarity metric that works on top of query and product embeddings. Two pre-trained word embedding models were tested, the first representing a category of models that generate fixed embeddings and a second representing a newer category of models that generate context-aware embeddings. Furthermore, a re-ranking step was performed by incorporating a list of quality indicators that reflects the utility of the product to the customer as inputs to well-known ranking methods. To prove the reliability of the approach, the Amazon reviews dataset was used for experimentation. The results demonstrated the effectiveness of context-aware embeddings in retrieving relevant products and the quality indicators in ranking high-quality products.
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页数:13
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