Nowadays, "touch the Internet" is becoming a key word for the Chinese brick-and-mortar retail industry, with dramatic changes of people's consumption lifestyle brought about by the Internet technology. Multi-channel retail model combined with traditional channel and Internet has become a standard mode for the retail industry. Under multi-channel retailing environment, consumer channel decision-making has changed fundamentally. The behavior that using different channels to buy becomes more and more popular. However, in the process of cross-channel buying, companies may also lose potential customers. For example, a consumer may enjoy the fitting service and personalized recommendations provided by a physical store, but end up purchasing clothes from the Internet, which seriously hurt the enthusiasm of traditional channel service personnel. Therefore, "how to guide consumers to migrate to the channel benefitting enterprises" becomes one of the important problems for multi-channel customer management. Firstly, a concept model of consumer channel selection mechanism including both search period and purchase period is established, based on the perceived value theory and trust transfer theory, specifically bringing products' search and risk characteristics into the model, channel-attributes, channel lock-in and cross-channel synergy's effects on consumer search intention and buying intention, and also, product search and risk characteristics' moderating functions to them are analyzed. Secondly, four simultaneous equations including consumer searching intention for traditional channel are listed, consumer searching intention for Internet channel, consumer buying intention for traditional channel and consumer buying intention for Internet channel are listed. Based on literature review, each variable of the equations is measured. Then data is collected by questionnaire survey. After the analysis of data's reliability and validity, parameters of consumer channel selection intention models are respectively estimated by 3SLS estimation using Stata12.0. Thirdly, consumer channel selection intentions about overall product categories and high-risk search product, low-risk search product, high-risk experience product, low-risk experience product are respectively analyzed. At last, conclusions and implications are put forward.
Some interesting results have been found. Firstly, channel-attributes, channel lock-in and cross-channel synergy affect consumer search intention and buying intention significantly. Secondly, for high-risk search products (such as mobile phones and personal computers), low-risk search products (such as books and stationery), high-risk experience products (such as clothing and cosmetics) and low-risk experience products (such as toys and snacks), there are obvious differences in channel search and buying attributes, traditional channel and Internet channel lock-in and cross-channel synergy's effects on consumer channel selection intention. Channel search attributes such as information availability, search convenience, assortment and social interactive affect consumer search intention positively, but search effort affects it negatively. Channel buying attributes such as service quality, purchase convenience and enjoyment affect consumer search intention positively, but purchase effort, purchase risk affects it negatively. Traditional channel has lock-in, but Internet channel hasn't. Otherwise for low-risk search products, Internet channel also has lock-in. For high-risk products, traditional channel and Internet channel has cross-channel synergy. For high-risk search products, there is some positive cross-channel synergy from Internet search to store purchase. For high-risk experience products, there is some positive cross-channel synergy both from Internet search to store purchase and from store search to Internet purchase. For low-risk experience products, there is no significant cross-channel synergy between the Internet and the store.
All of these throw lights on practical implications for enterprises' channel construction, increasing customer stickiness and managing multi-channel customer effectively.
[1] 刘向东,李子文,陈成漳.实体零售商该如何"触网"?——零售技术效率的视角[J].商业经济与管理, 2017,4:5-15.
[2] 王正方,杜碧升,屈佳英.基于感知价值的消费者网络购物渠道选择研究[J].消费经济,2016,32(4):91-97.
[3] 吴锦峰,侯德林,张译井.多渠道零售系统顾客采纳意愿的影响因素研究——基于网络购物经验的调节作用[J].北京工商大学学报(社会科学版),2016,31(4):51-59.
[4] 刘晓峰,顾领.基于消费者转换行为的线上线下产品定价策略研究[J].管理科学,2016, 29(2):27-36.
[5] 牛志勇,黄沛,王军.公平偏好下多渠道零售商线上线下同价策略选择分析[J].中国管理科学, 2017,25(3):147-155.
[6] 尹华站,李丹,苏琴,等.搜索成本类型和搜索收益对搜索意愿的影响研究[J].西南师范大学学报(自然科学版),2013,38(8):50-55.
[7] 王丽丽,赵炳新,D Nebenzahl.网络视角下的消费者信息搜索行为研究——产品类别的调节作用[J].大连理工大学学报(社会科学版),2017,38(2):1-7.
[8] 王崇,王延青.基于交易成本的风险规避型消费者购物渠道决策行为研究[J].管理评论,2016, 28(9):172-181.
[9] 杜惠英,王兴芬,庄文英. 在线评价对消费者购买意愿影响理论模型与实证研究[J].中国流通经济,2017,31(8):49-56.
[10] 卢亭宇,庄贵军,丰超,等.O2O情境下的渠道迁徙路径与在线信息分享[J].西安交通大学学报(社会科学版), 2017,(5):40-48.
[11] 高洋,王琳雅.基于匹配理论的消费者渠道选择行为影响因素[J].沈阳工业大学学报(社会科学版),2016,9(1):91-96.
[12] Neslin S A, Grewal D, Leghorn R, et al. Challenges and opportunities in multichannel management[J].Journal of Service Research, 2006, 9(2):95-113.
[13] Kushwaha T, Shankar V. Are multichannel customers really more valuable? The moderating role of product category characteristics[J].Journal of Marketing,2013,77(4):67-85.
[14] Verhoef P C, Neslin S A, Vroomen B. Multichannel customer management:Understanding the research-shopper phenomenon[J]. International Journal of Research in Marketing,2007, 24(2):129-148.
[15] 周利兵,钱慧敏.二元渠道下消费者渠道选择行为研究[J].统计与信息论坛,2015,30(5):105-112.
[16] 代婷,温德成,陈晓.O2O模式下顾客购物渠道选择行为研究[J].山东社会科学,2016,(10):119-125.
[17] 韦斐琼,樊亚凤,蒋晶.搜索任务类型对消费者网络信息搜索努力的影响机制——基于自我效能感的中介作用[J].营销科学学报,2017,13(1):83-97.
[18] 王琦,席丹,张晓航.支付方式与消费者购买决策——基于心理账户理论的分析[J].商业研究, 2017,(10):10-15.
[19] Sinthamrong P, Rompho N. Factors affecting attitudes and purchase intentions toward branded content on webisodes[J]. Journal of Management Policy & Practice,2015, 16(4):64-72.
[20] Wang Wei, Li Gang, Cheng T C E. Channel selection in a supply chain with a multi-channel retailer:The role of channel operating costs[J].International Journal of Production Economics, 2016,173:54-65.
[21] Van Baal S, Dach C. Free riding and customer retention across retailers' channels[J].Journal of Interactive Marketing,2005,19(2):75-85.
[22] Montoya-weiss M M, Voss G B, Grewal D. Determinants of online channel use and overall satisfaction with a relational, multichannel service provider[J]. Journal of the Academy of Marketing Science, 2003,31(4):448-458.
[23] 胡正明,王亚卓.基于中国多渠道情境下消费者购买选择研究[J].东岳论丛,2011,32(4):178-180.
[24] Singh S, Swait J.Channels for search and purchase:Does mobile Internet matter?[J].Journal of Retailing & Consumer Services,2017,39:123-134.
[25] 郭燕,周梅华,刘满芝.基于网络的消费者社会互动及管理研究[J].商业研究,2011,(7):89-93.
[26] Zettelmeyer F. Expanding to the Internet:Pricing and communications strategies when firms compete on multiple channels[J].Journal of Marketing Research,2013,37(3):292-308.
[27] Lawson R,Bhagat P S.The role of price knowledge in consumer product knowledge structures[J].Psychology & Marketing,2002,19(6):551-568.
[28] Bove L L, Johnson L W. A customer-service worker relationship model[J].International Journal of Service Industry Management,2000,11(5):491-511.
[29] Lee K C, Kang I, Mcknight D H. Transfer from offline trust to key online perceptions:An empirical study[J].IEEE Transactions on Engineering Management,2007,54(4):729-741.
[30] Stewart D W, Zhao Qin.Internet marketing, business models, and public policy[J].Journal of Public Policy & Marketing,2013,19(2):287-296.
[31] Nel J, Boshoff C.Development of application-based mobile-service trust and online trust transfer:An elaboration likelihood model perspective[J].Behaviour & Information Technology,2017,36(8):809-826.
[32] 杨水清.基于消费者视角的渠道扩展与选择行为研究[D].武汉:华中科技大学博士论文,2012.
[33] 吴雪,董大海.互联网环境下消费者跨渠道购买行为研究[J].当代经济管理,2014,36(11):34-40.
[34] Mudambi S M, Tallman S. Make, buy or ally? Theoretical perspectives on knowledge process outsourcing through alliances[J].Journal of Management Studies,2010,47(8):1434-1456.
[35] Bart Y,Urban G L.Are the drivers and role of online trust the same for all web sites and consumers? A large-scale exploratory empirical study[J].Journal of Marketing,2005, 69(4):133-152.
[36] Chiang W Y K.Product availability in competitive and cooperative dual-channel distribution with stock-out based substitution[J].European Journal of Operational Research,2010,200(1):111-126.
[37] Alba J, Wood S. Interactive home shopping:Consumer, retailer, and manufacturer incentives to participate in electronic markets[J].Journal of Marketing,1997,61(3):38-53.
[38] Ratchford B T,Talukdar D,Lee M. The impact of the Internet on consumers' use of information sources for automobiles[J].Journal of Consumer Research,2007,34(1):111-119.
[39] Hoque A Y, Lohse G L. An information search cost perspective for designing interfaces for electronic commerce[J].Journal of Marketing Research,1999,36(3):387-394.
[40] Baker J, Parasuraman A, Grewal D, et al. The influence of multiple store environment cues on perceived merchandise value and patronage intentions[J].Journal of Marketing,2002, 66(2):120-141.
[41] Kim Y K. Consumer value:An application to mall and Internet shopping[J].International Journal of Retail & Distribution Management,2002,30(12):595-602.
[42] Mathwick C,Malhotra N,Rigdon E. Experiential value:Conceptualization, measurement and application in the catalog and Internet shopping environment[J].Journal of Retailing,2001,77(1):39-56.
[43] Messinger P R,Narasimhan C. A model of retail formats based on consumers' economizing on shopping time[J].Marketing Science,1997,16(1):1-23.
[44] Schlosser A E,White T B,Lloyd S M. Converting web site visitors into buyers:How web site investment increases consumer trusting beliefs and online purchase intentions[J]. Journal of Marketing,2006,70(2):133-148.
[45] Gijsbrechts E, Campo K, Goossens T. The impact of store flyers on store traffic and store sales:A geo-marketing approach[J].Journal of Retailing,2003,79(1):1-16.
[46] Forsythe S M,Shi Bo. Consumer patronage and risk perceptions in Internet shopping[J]. Journal of Business Research,2003,56(11):867-875.
[47] Park C, Jun J K.A cross-cultural comparison of Internet buying behavior:Effects of Internet usage, perceived risks and innovativeness[J].International Marketing Review,2003,20(5):534-553.
[48] Gupta A, Su B C, Walter Z. An empirical study of consumer switching from traditional to electronic channels:A purchase-decision process perspective[J].International Journal of Electronic Commerce,2004,8(3):131-161.
[49] Jacoby J, Kaplan L B. The components of perceived risk[C]//Proceedings of the third Annual Conference of the Association for Consumer Research Chicago, 1972.
[50] Xiang Zheng,Magnini V P,Fesenmaier D R. Information technology and consumer behavior in travel and tourism:Insights from travel planning using the Internet[J].Journal of Retailing & Consumer Services,2015,22:244-249.
[51] 於志东.物联网时代企业把握网上消费者心理与行为研究[J].华东经济管理,2012,26(1):39-41.
[52] Shannon D M.Scale development:theory and applications[J].Evaluation Practice,1993, 14(2):179-181.