Estimating consumer preferences for online music services

This article analyses consumer preferences with regard to important attributes of online music services. Conjoint analysis and a random coefficient discrete choice model using Bayesian approach with Gibbs sampling are used to estimate the preferences. Based on the quantitative results, we use simulation to look at how a new pricing strategy and the threat of legal penalty for file sharing would influence the online music market. Findings include these: estimated willingness to pay for downloading one music file is significantly less than the actual price of the file; consumers are sensitive to longer search and download times for music files and very sensitive to the threat of legal action; and consumers are not sensitive to online music services broadening their catalogues. Finally, the simulation shows that a combination of increased transaction costs for illegal file sharing and lower-priced digital music files would inhibit illegal file sharing and bolster the number of people purchasing music legally from the online services.

[1]  Kenneth E. Train,et al.  Discrete Choice Methods with Simulation , 2016 .

[2]  K. Train,et al.  Forecasting new product penetration with flexible substitution patterns , 1998 .

[3]  Patrick Waelbroeck,et al.  Why the Music Industry May Gain from Free Downloading - the Role of Sampling , 2006 .

[4]  Koji Domon,et al.  Unauthorized file-sharing and the pricing of digital content , 2004 .

[5]  David F. Layton,et al.  Random Coefficient Models for Stated Preference Surveys , 2000 .

[6]  Kenneth Train,et al.  Mixed Logit with Bounded Distributions of Correlated Partworths , 2005 .

[7]  Clifford Winston,et al.  Econometric Issues in Estimating Consumer Preferences from Stated Preference Data: A Case Study of the Value of Automobile Travel Time , 2001, Review of Economics and Statistics.

[8]  T. Pénard,et al.  La gratuité est-elle une fatalité sur les marchés numériques ? Une étude sur le consentement à payer pour des offres de contenus audiovisuels sur internet , 2010 .

[9]  Siddhartha Chib,et al.  Markov chain Monte Carlo and models of consideration set and parameter heterogeneity , 1998 .

[10]  Yeonbae Kim,et al.  Effects of consumer preferences on the convergence of mobile telecommunications devices , 2005 .

[11]  Jochen Strube,et al.  Strategies for Digital Music Markets: Pricing and the Effectiveness of Measures against Pirate Copies - Results of an Empirical Study , 2005, ECIS.

[12]  Peter E. Rossi,et al.  Marketing models of consumer heterogeneity , 1998 .