Sensibility Ergonomics Design Recommendation System Using Weather WebBot

Kyung-Yong Chung
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引用次数: 6

Abstract

Analysis of a customer's sensibility and preferences is an important strategy in a market that is becoming increasingly more customer oriented. In this paper, we propose the sensibility ergonomics design recommendation system using weather Web-Bot (DRS-WB). The proposed method applies sensibility ergo-nomics to increase the efficiency of merchandising for human-oriented sensible product designs. Development of DRS-WB used a user interface and collaborative filtering for the textile and fashion designs in order to satisfy the user's needs. Collaborative filtering was adopted in order to recommend designs of interest for users based on the predictive relationship discovered between the current user and other previous users. The today weather information is simultaneously acquired from the sensor based smartwear and the weather WebBot (Web Robot Agent). The weather WebBot uses a database of weather forecast information extracted from the web pages and RSS of the Korea Meteorologi-cal Administration and collects information from the various links off the main URL. And its signals are transmitted to the connected DRS-WB. It can be easily monitored in real time. We used 60 textile designs and 41 fashion designs in the survey ques-tionnaire. The composition of the questionnaire is 17 sections for 6 designs on a page. 2,830,020 ratings were collected from 1,401 users. The pictures of fashion design details, such as collar type, sleeve type, skirt type, skirt length, and color tone were evaluated in terms of sensibility. Ultimately, this paper suggests empirical applications to verify the adequacy and the validity of this system.
基于Weather WebBot的感性人机工程设计推荐系统
在一个越来越以客户为导向的市场中,分析客户的敏感性和偏好是一项重要的策略。本文提出了基于天气网络机器人(weather Web-Bot, DRS-WB)的感性工效学设计推荐系统。该方法将感性自我经济学应用到以人为本的感性产品设计中,以提高产品的销售效率。为了满足用户的需求,DRS-WB的开发采用了用户界面和对纺织品和服装设计的协同过滤。采用协同过滤,根据当前用户和其他先前用户之间发现的预测关系,为用户推荐感兴趣的设计。今天的天气信息同时从基于传感器的智能穿戴和天气WebBot(网络机器人代理)中获取。weather WebBot利用从气象厅的网页和RSS中提取的天气预报信息数据库,从主URL的各种链接中收集信息。它的信号被传输到连接的DRS-WB。它可以很容易地实时监控。我们在调查问卷中使用了60种纺织品设计和41种服装设计。问卷的组成是17个部分,一页6个设计。从1401名用户中收集了2830,020个评分。通过对领型、袖型、裙型、裙长、色调等服装设计细节的图片进行感性评价。最后,本文提出了实证应用来验证该体系的充分性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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