[KDD2020] Automatic Validation of Textual Attribute Values in E-commerce Catalog by Learning with Limited Labeled Data

[KDD2020] Automatic Validation of Textual Attribute Values in E-commerce Catalog by Learning with Limited Labeled Data

Dec 18, 2020
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Product catalogs are valuable resources for eCommerce website. In the catalog, a product is associated with multiple attributes whose values are short texts, such as product name, brand, functionality and flavor. Usually individual retailers self-report these key values, and thus the catalog information unavoidably contains noisy facts. It is very important to validate the correctness of these values in order to improve shopper experiences and enable more effective product recommendation. Due to the huge volume of products, an effective automatic validation approach is needed. In this paper, we propose to develop an automatic validation approach that verifies the correctness of textual attribute values for products. This can be formulated as a task as cross-checking a textual attribute value against product profile, which is a short textual description of the product on eCommerce website.

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