When do changes in consumer preferences make forecasts from choice-based conjoint models unreliable?

Forecasting the sales or market share of new products is a major challenge as there is little or no sales history with which to estimate levels and trends. Choice-based conjoint (CBC) is one of the most common approaches used to forecast new products’ sales. However, the accuracy of forecasts based on CBC models may be reduced when consumers’ preferences for the attributes of products are labile. Despite this, there is a lack of research on the extent to which lability can impair accuracy when the coefficients estimated in CBC models are assumed to be constant over time. This paper aims to address this research gap by investigating the prevalence of lability for consumer durable products and its potential impact on the accuracy of forecasts. There are reasons to expect that lability may be particularly evident where a product is subject to rapid technological change and has a short product life-cycle. We carried out a longitudinal survey of the preferences of 161 potential consumers relating to four different types of products. We established that for both functional and innovative products: (i) the CBC models vary significantly over time, indicating changes in consumer preferences and (ii) such changes may cause large differences in forecasts of the probabilities that consumers will purchase particular brands of products. Hence employing models where coefficients do not change over time can potentially lead to inaccurate market share forecasts for high-tech, short life-cycle products that are launched even a short time after the choice-based modelling has been conducted.

[1]  Paul Goodwin,et al.  Decision Analysis for Management Judgment , 1998 .

[2]  Yeonbae Kim,et al.  Demand forecasting for new technology with a short history in a competitive environment: the case of the home networking market in South Korea , 2008 .

[3]  Eric R. Hansen,et al.  Industrial location choice in Sao Paulo, Brazil : A nested logit model , 1987 .

[4]  M. F. Luce,et al.  Constructive Consumer Choice Processes , 1998 .

[5]  Monle Lee,et al.  Relationship marketing and consumer switching behavior , 2005 .

[6]  W. Michael Cox,et al.  The right stuff: America's move to mass customization , 1998 .

[7]  Rohit Verma,et al.  Issues in the use of ratings-based versus choice-based conjoint analysis in operations management research , 2009, Eur. J. Oper. Res..

[8]  Thorsten Teichert,et al.  Choice-Based Conjoint Analysis , 2018, Handbook of Market Research.

[9]  John D. C. Little,et al.  A Logit Model of Brand Choice Calibrated on Scanner Data , 2011, Mark. Sci..

[10]  Eric J. Johnson,et al.  The adaptive decision maker , 1993 .

[11]  P. Goodwin,et al.  New Product Sales Forecasting in the Mobile Phone Industry : an evaluation of current methods , 2013 .

[12]  Vijay Mahajan,et al.  Chapter 8 New-product diffusion models , 1993, Marketing.

[13]  Merja Halme,et al.  Likelihood estimation of consumer preferences in choice-based conjoint analysis , 2014, Eur. J. Oper. Res..

[14]  R. Pollak Endogenous Tastes in Demand and Welfare Analysis , 1978 .

[15]  Muammer Ozer,et al.  Understanding the impacts of product knowledge and product type on the accuracy of intentions-based new product predictions , 2011, Eur. J. Oper. Res..

[16]  On Amir,et al.  Choice Construction versus Preference Construction: The Instability of Preferences Learned in Context , 2007 .

[17]  Douglas P. Woodward Locational Determinants of Japanese Manufacturing Start-Ups in the United States , 1992 .

[18]  M. Keane,et al.  Decision-Making Under Uncertainty: Capturing Dynamic Brand Choice Processes in Turbulent Consumer Goods Markets , 1996 .

[19]  Merja Halme,et al.  Estimation methods for choice-based conjoint analysis of consumer preferences , 2011, Eur. J. Oper. Res..

[20]  Alfred DeMaris,et al.  Regression With Social Data: Modeling Continuous and Limited Response Variables , 2004 .

[21]  Felix Eggers,et al.  Where have all the flowers gone? Forecasting green trends in the automobile industry with a choice-based conjoint adoption model , 2011 .

[22]  Daniel A. Gerlowski,et al.  WHAT ATTRACTS FOREIGN MULTINATIONAL CORPORATIONS? EVIDENCE FROM BRANCH PLANT LOCATION IN THE UNITED STATES , 1992 .

[23]  Trichy V. Krishnan,et al.  Research Note: Multinational Diffusion Models: An Alternative Framework , 2002 .

[24]  Changil Kim,et al.  Discrete choice modelling , 2009 .

[25]  J. Payne,et al.  Product category familiarity and preference construction , 1998 .

[26]  Hirofumi Matsuo,et al.  Forecasting and Inventory Management of Short Life-Cycle Products , 1996, Oper. Res..

[27]  H. Cooper,et al.  A Quantitative Review of Research Design Effects on Response Rates to Questionnaires , 1983 .

[28]  B. Kahn Consumer variety-seeking among goods and services: An integrative review , 1995 .

[29]  Stanley M. Davis,et al.  From “future perfect”: Mass customizing , 1989 .

[30]  Peter S. Fader,et al.  Accounting for Heterogeneity and Nonstationarity in a Cross-Sectional Model of Consumer Purchase Behavior , 1993 .

[31]  Abbas A. Kurawarwala,et al.  Product Growth Models for Medium-Term Forecasting of Short Life Cycle Products , 1998 .

[32]  C. W. Park,et al.  Familiarity and Its Impact on Consumer Decision Biases and Heuristics , 1981 .

[33]  Damaraju Raghavarao,et al.  Choice-Based Conjoint Analysis: Models and Designs , 2010 .

[34]  H.L. Lee,et al.  Aligning Supply Chain Strategies with Product Uncertainties , 2002, IEEE Engineering Management Review.

[35]  Duk Bin Jun,et al.  A Choice-Based Diffusion Model for Multiple Generations of Products , 1999 .

[36]  Chul-Yong Lee,et al.  Forecasting future demand for large-screen television sets using conjoint analysis with diffusion model , 2006 .

[37]  Felix Maringe,et al.  University and course choice: Implications for positioning, recruitment and marketing , 2006 .

[38]  R. Dhar Consumer Preference for a No-Choice Option , 1997 .

[39]  A. Andreasen Life Status Changes and Changes in Consumer Preferences and Satisfaction , 1984 .

[40]  Myoung Hwan Park,et al.  Forecasting telecommunication service subscribers in substitutive and competitive environments , 2002 .

[41]  R. Fildes,et al.  Measuring forecasting accuracy : the case of judgmental adjustments to SKU-level demand forecasts , 2013 .

[42]  N. Meade,et al.  Modelling and forecasting the diffusion of innovation – A 25-year review , 2006 .

[43]  Frank M. Bass,et al.  A New Product Growth for Model Consumer Durables , 2004, Manag. Sci..

[44]  P. Goodwin,et al.  The challenges of pre-launch forecasting of adoption time series for new durable products , 2014 .

[45]  H. Simon,et al.  A Behavioral Model of Rational Choice , 1955 .

[46]  H Hoagland,et al.  The right stuff. , 2000, Occupational health & safety.