Fashion recommendations using text mining and multiple content attributes
Files
Date issued
2017
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Many online stores actively recommend commodities to users for facilitating easy product selection and increasing
product exposure. Typical approach is by collaborative filtering, namely recommending the products based
on their popularity, assuming that users may buy the products that many others have purchased. However,
fashion recommendation is different from other product recommendations, because people may not like to go
with the crowd in selecting fashion items. Other approaches of fashion recommendations include providing
suggestions based on users’ purchase or browsing history. This is mainly done by searching similar products
using commodities’ tags. Yet, the accuracy of tag-based recommendations may be limited due to ambiguous text
expression and nonstandard tag names for fashion items. In this paper we collect a large fashion clothing dataset
from different online stores. We develop a fashion keyword library by statistical natural language processing, and
then we formulate an algorithm to automatically label fashion product attributes according to the defined library by
text mining and semantic analysis. Lastly, we develop novel fashion recommendation models to select similar and
mix-and-match products by integrating text-based product attributes and image extracted features. We evaluate the
effectiveness of our approach by experiment over real datasets.
Description
Subject(s)
módní doporučení, textové dolování
Citation
WSCG 2017: poster papers proceedings: 25th International Conference in Central Europe on Computer Graphics, Visualization and Computer Visionin co-operation with EUROGRAPHICS Association, p. 47-52.