Style Similarity as Feedback for Product Design
- URL: http://arxiv.org/abs/2105.12256v1
- Date: Tue, 25 May 2021 23:30:29 GMT
- Title: Style Similarity as Feedback for Product Design
- Authors: Mathew Schwartz, Tomer Weiss, Esra Ataer-Cansizoglu, Jae-Woo Choi
- Abstract summary: We take a product design perspective, by employing big-data analysis for determining the design qualities of a highly recommended product.
We build off previous work which implemented a style-based similarity metric for thousands of furniture products.
We propose a designer in-the-loop workflow that mirrors methods of displaying similar products to consumers browsing e-commerce websites.
- Score: 7.241984306136333
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Matching and recommending products is beneficial for both customers and
companies. With the rapid increase in home goods e-commerce, there is an
increasing demand for quantitative methods for providing such recommendations
for millions of products. This approach is facilitated largely by online stores
such as Amazon and Wayfair, in which the goal is to maximize overall sales.
Instead of focusing on overall sales, we take a product design perspective, by
employing big-data analysis for determining the design qualities of a highly
recommended product. Specifically, we focus on the visual style compatibility
of such products. We build off previous work which implemented a style-based
similarity metric for thousands of furniture products. Using analysis and
visualization, we extract attributes of furniture products that are highly
compatible style-wise. We propose a designer in-the-loop workflow that mirrors
methods of displaying similar products to consumers browsing e-commerce
websites. Our findings are useful when designing new products, since they
provide insight regarding what furniture will be strongly compatible across
multiple styles, and hence, more likely to be recommended.
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