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An empirical comparison of sales time series for online and offline channels for commodities in China

Published online by Cambridge University Press:  04 September 2014

JINLONG WANG
Affiliation:
School of Computer Engineering, Qingdao Technological University, Qingdao, China and Medical College of Qingdao University, Qingdao, China Email: wangjinlong@gmail.com
CAN WEN
Affiliation:
School of Computer Engineering, Qingdao Technological University, Qingdao, China Email: wencan314@gmail.com
XIAOYI WANG
Affiliation:
School of Management, Zhejiang University, Hangzhou, China Email: kevinwxy@zju.edu.cn

Abstract

In this paper we make an empirical comparison of sales time series for online and offline channels. In particular, we analyse the sales dynamic and fluctuation level underlying the sales time series in different channels. The accumulative daily sales distributions of commodities are analysed statistically and the daily sales series are also studied from the perspective of complex networks. We find that most of the commodities' accumulative sales distributions can be fitted by power-law distributions. Visibility graphs are constructed for the daily sales series, and the accumulative degree distributions are also investigated – it is found that they also almost follow power-law distribution. The constant parameter α indicates that different specifications of the same goods have different sales characteristics, and different forms of packaging of commodities, either special offer or ordinary, also show distinctive sales fluctuation levels. The differences show that the direction of these relationships is opposite for online and offline channels.

Type
Paper
Copyright
Copyright © Cambridge University Press 2014 

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Footnotes

This work was partially supported by the National Natural Science Foundation of P. R. China (Numbers 60802066, 51005202, 61004104, 70902061 and 61173056), the China Postdoctoral Science Foundation (Numbers 20100471494 and 20100471720), vand the Excellent Young Scientist Foundation of Shandong Province of China under Grant (Number 2008BS01009).

References

Andrews, R. and Currim, I. (2004) Behavioral differences between consumers attracted to shopping online versus traditional supermarkets: implications for enterprise design and marketing strategy. International Journal of Marketing Advertising 1 (1)3861.Google Scholar
Chen, G. R. and Xu, X. M. (2008) Networks theory and applications. Proceedings of the National Academy of Sciences of the United States of America 105 (13)49724975.Google Scholar
Chiang, C. L. (2003) Statical methods of analysis, System Science Press, Shanghai92169.Google Scholar
Chu, J. H., Chintagunta, P. and Cebollada, J. (2008) A comparison of within-household price sensitivity across online and offline channels. Marketing Science 27 (2)283–99.Google Scholar
Chu, J. H., Arce-Urriza, M., Cebollada-Calvo, J. and Chintagunta, P. (2010) An empirical analysis of shopping behavior across online and offline channels for grocery products: the moderating effects of household and product characteristics. Journal of Interactive Marketing 24 (1)251268.Google Scholar
Clauset, A., Shalizi, C. R. and Newman, M. E. J. (2009) Power-law distributions in empirical data. SIAM Review 51 (4)661703.Google Scholar
Degeratu, A. M., Rangaswamy, A. and Wu, J. (2000) Consumer choice behavior in online and traditional supermarkets: the effects of brand name, price, and other search attributes. International Journal of Research in Marketing 17 (1)5578.Google Scholar
Geng, X. Y., Wen, C., Wang, X. Y. and Wang, J. L. (2011) Analysis of daily commodities sales in China with visibility graph. International Journal of Advancements in Computing Technology 3 (4)213221.Google Scholar
Goldstein, M. L., Morris, S. A. and Yen, G. G. (2004) Problems with fitting to the power-law distribution. Proceedings of the National Academy of Sciences of the United States of America 41 (2)255258.Google Scholar
Groot, R. D. (2004) Lévy distribution and long correlation times in supermarket sales. Physica A 353 (1)501514.CrossRefGoogle Scholar
Hisano, R. and Mizuno, T. (2010) Sales distribution of consumer electronics. Physica A 390 (1)309318.Google Scholar
Johnson, N. L., Kotz, S. and Kemp, A. W. (1992) Univariate discrete distributions (2nd Edition), John Wiley.Google Scholar
Lacasa, L., Luque, B., Ballesteros, F., Luque, J. and Nuno, J. C. (2008) From time series to complex networks: the visibility graph. Proceedings of the National Academy of Sciences of the United States of America 105 (13)49724975.Google Scholar
Lynch, J. G. and Ariely, D. (2000) Wine online: search costs affect competition on price, quality and distribution. Marketing Science 19 (1)83103.CrossRefGoogle Scholar
Pozzi, A. (2008) Shopping cost and brand exploration in online grocery. Working Paper, Department of Economics, Stanford University.Google Scholar
Shankar, V., Smith, A. and Rangaswamy, A. (2003) Customer satisfaction and loyalty in online and offline environments. International Journal of Research in Marketing 20 (2)153175.Google Scholar
Small, M., Zhang, J. and Xu, X. K. (2009) Transforming time series into complex networks. Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering 5 (1)20782089.CrossRefGoogle Scholar
Sornette, D., Deschartes, F., Gilbert, T. and Ageon, Y. (2004) Endogenous versus exogenous shocks in complex networks: an empirical test using book sale ranking. Physical Review Letters 93 (22)228701.Google Scholar
Zhang, J. and Small, M. (2006) Complex network from pseudoperiodic time series: topology versus dynamics. Physical Review Letters 96 (1)238701.Google Scholar