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女性运动裤脚款式感知评价与个性化定制推荐

Leg style perception evaluation and personalized customization of women′s sports trousers
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摘要 为提升产品核心部件个性化推荐与用户情感需求的匹配度,帮助企业更准确把握用户定制过程的感性偏好,以女性运动裤的裤脚为例,构建基于感性工学的个性化推荐模型。首先采用语意差异法获取消费者对裤脚款式在7个维度的感性评价,建立感性意象空间;然后提取裤脚款式的设计要素,通过偏最小二乘法建立设计要素与消费感知的映射模型;最后采用模糊层次分析法量化消费者的感性需求,结合映射模型建立个性化推荐模型。结果显示:推荐结果与消费者感知评价的平均余弦相似度为0.902,说明设计元素与消费感知存在较高相关性;推荐算法预测结果的平均绝对值误差为0.54,推荐结果与用户需求匹配度较高,能有效将消费感性需求转化为设计元素。 Objective In recent years,consumers′demand for clothing has turned to be more individualized,diversified and intelligent.The purpose of this paper is to help enterprises accurately grasp the emotional preference of consumers in the customization process,so as to match the personalized recommendation of product core components with users′emotional needs,thus achieving successful personalized customization.This paper takes the female tracksuit bottom as an example to establish a personalized recommendation model based on Kanseiengineering,and to help consumers customize personal schemes based on their needs.Method Based on the principle of Kansei engineering,this paper firstly collected the bottom styles and design elements.Adjective words were selected to describe the style,and semantic difference method was used to obtain consumers′perceptual evaluation in seven dimensions and build a perceptual image space.Then,the author set up a mapping model between design elements and consumer perception through partial least square(PLS)method.Analytic hierarchy process(FAHP)was applied to quantify the perceptual needs of consumers,and a personalized recommendation model combining with mapping modelwas established.Results Through a preliminary screening,literature review and expert consultation of 100 tracksuit bottom designs,the quantifiable factors wereset including looseness,closing method and slitting method.Morphological analysis was used to decompose the three elements twice to obtain 12 sub elements.The design elements and coding table are shown in Tab.1.After preliminary screening,questionnaire survey and expert screening of 120 perceptual adjectives werecollected,7 pairs of adjectives were finally obtained which were used to establish the perceptual image space of female tracksuit bottoms.The vocabulary and its definition angle are shown in Tab.2.According to the principle of Kanseiengineering,a 7-level scale was designed by semantic difference method.70 female college students with exercise habits were randomly invited for questionnaire survey,and 64 valid questionnaires were obtained.The average score of sample styles are shown in Tab.3.Minitab software was used to conduct regression analysis on the average scores of style design elements and adjectives.The regression coefficient table is shown in Tab.4.According to the regression coefficient,a mapping model between design elements and consumption perception was established.Through questionnaire,users wereasked to choose the perceptual image words of preference to describe individual needs.For example,user I′s perceptual image acquisition and demand emphasis are shown in Tab.5 and Tab.6.The weight of perceptual image wascalculated by FAHP,thus obtaining user one′s perceptual image weight expression.Based on weight,clothing set distance sortingwas adopted,and recommendations were made according to the sorting results.For the case of user I,the comprehensive evaluation distance P was sorted of each experimental sample,and four styles that meet the perceptual needs of user I were generate(Fig.4).15 consumers were invited at random again to make recommendations,and the recommendation results were obtained,and the consumers were asked to conduct emotional evaluation on the recommendation results.The similarity of the score matrix between the recommendation results and the perception evaluation was compared by calculating the cosine similarity of formula 4.The average similarity reached 0.902,which was relatively high.The average absolute value error(R MAE)of formula 5 was used to evaluate the accuracy of recommendation results(Fig.5).R MAE was all less than 0.75.The recommendation algorithm was found able topredict and recommend accurately and has certain application value.Conclusion Based on Kansei engineering,this paper proposed a personalized recommendation model for tracksuit bottom,and demonstrates the algorithm and process of the recommendation.Through testing,it shows that this model can effectively transform the emotional needs of consumers into design elements,so that the recommendation results can be matched with user needs,thus realizing personalized recommendation for tracksuit bottom based on the emotional needs of users,and improving the efficiency of personalized customization.At present,only the styles of female tracksuit bottoms have been evaluated and recommended.In the future,more comprehensive studies can be carried out based on fabric comfort and color.Besides,the tracksuit bottom is only one part of a garment,and the research object can be expanded to other parts.
作者 蔡丽玲 任钱斌 季晓芬 肖增瑞 章依凌 CAI Liling;REN Qianbin;JI Xiaofen;XIAO Zengrui;ZHANG Yiling(Zhejiang International Institute of Fashion Technology,Zhejiang Sci-Tech University,Hangzhou,Zhejiang 310018,China;Silk and Fashion Culture Research Center of Zhejiang Province,Zhejiang Sci-Tech University,Hangzhou,Zhejiang 310018,China;College of Fashion Design and Engineering,Zhejiang Sci-Tech University,Hangzhou,Zhejiang 310018,China;China National Silk Museum,Hangzhou,Zhejiang 310018,China)
出处 《纺织学报》 EI CAS CSCD 北大核心 2023年第4期165-171,共7页 Journal of Textile Research
基金 国家社会科学基金艺术学项目(20BG134) 国家自然科学基金青年科学基金项目(72101233) 浙江省哲学社会科学规划项目(21NDJC062YB)。
关键词 服装部件 裤脚 个性定制 感性工学 映射模型 个性化推荐 apparel component trousers personalized customization Kansei engineering mapping model personalized recommendation
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