Abstract
Research was conducted in this study to design data-based size recommendation and size coding systems specifically for online shopping malls, expecting to lighten the burden of holding excessive inventories often caused by the high return rate in these online malls. The recommendation system has been implemented focusing mainly on size extraction and recommendation functions along with a UI (user interface). For the former function, data are necessary to extract customers’ sizes and, for instance, the system to be used in China adopts their Chinese standard body size GB/T (Chinese national standard) considering that there are a variety of body types in their substantial population. The system shows the most similar size dataset among the body size GB/T dataset to the customer once he/she inputs his/her height and weight. Each GB/T data was entered after categorizing it according to the proportion between height and weight. For the latter function, size recommendation, size coding was performed first for all the clothes by the shop owner by entering individual size data. The clothes providing the most suitable fit for the customer are recommended by the selection of that which has the smallest deviation between coded clothes size and the customer body data after performing a series of comparative calculations. To validate the effectiveness of the extraction, a method that checks whether the difference between extracted size and the body size that has been measured remains within the error range of 4cm was used. The result showed there to be an approximate 88% matching rate for women and a slightly lower accuracy of 80% for men. Moreover, the error rate was relatively smaller for the upper half clothing such as shirts, jackets, and blouses or one-piece dresses. Such a result may have been generated since the GB/T data were actually the average data entered 10 years prior without categorizing nationalities, ages, and body types in detail. This research emphasized the necessity of a database containing a more segmented human body size data, which can be effective for extracting and recommending sizes more accurately as the latest ones continue to accumulate.
Highlights
IntroductionThis paper compiles existing size data into a format that can be coded in a computer
This paper compiles existing size data into a format that can be coded in a computer.a customer personal size extraction function was developed on the Design U apparel web platform followed by the development of a coding system that providers can input actual size of the products
A18006sccimmze com181p51accmrmison table is provided for the reference of clothing size with height at the standard weight
Summary
This paper compiles existing size data into a format that can be coded in a computer. The seller of clothing at a shopping mall can enter the tags in the shopping mall size coding system immediately and recommend the most appropriate size of ready-made clothing product to the customer through automatic comparison by the system If these technologies can be applied to the shopping malls together with a customer-friendly UX/UI (user experience/user interface) design, it will be possible to serve customers’ convenience by reducing the uncertainties involved in online size selections. This is much more convenient than relying on the existing heavy and lowaccuracy 3D scanners that require a time-consuming and tedious work of measuring sizes directly. It is a method of product recommendation through quick body area
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