E-commerce businessmodel mining and prediction
Zhou-zhou HE, Zhong-fei ZHANG, Chun-ming CHEN, Zheng-gang WANG
E-commerce businessmodel mining and prediction
We study the problem of business model mining and prediction in the e-commerce context. Unlike most existing approaches where this is typically formulated as a regression problem or a time-series prediction problem, we take a different formulation to this problem by noting that these existing approaches fail to consider the potential relationships both among the consumers (consumer influence) and among the shops (competitions or collaborations). Taking this observation into consideration, we propose a new method for e-commerce business model mining and prediction, called EBMM, which combines regression with community analysis. The challenge is that the links in the network are typically not directly observed, which is addressed by applying information diffusion theory through the consumer-shop network. Extensive evaluations using Alibaba Group e-commerce data demonstrate the promise and superiority of EBMM to the state-of-the-art methods in terms of business model mining and prediction.
E-commerce / Business model prediction / Consumer influence / Social network / Sales prediction
[1] |
Anagnostopoulos, A., Kumar, R., Mahdian, M., 2008. Influence and correlation in social networks. Proc. 14th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.7―15. [
CrossRef
Google scholar
|
[2] |
Anagnostopoulos, A., Brova, G., Terzi, E., 2011. Peer and authority pressure in information-propagation models. LNCS, 6911: 76―91. [
CrossRef
Google scholar
|
[3] |
Bakshy, E., Hofman, J.M., Mason, W.A.,
CrossRef
Google scholar
|
[4] |
Bakshy, E., Rosenn, I., Marlow, C.,
CrossRef
Google scholar
|
[5] |
Bernstein, M.S., Bakshy, E., Burke, M.,
CrossRef
Google scholar
|
[6] |
Bhagat, S., Goyal, A., Lakshmanan, L.V.S., 2012. Maximizing product adoption in social networks. Proc. 5th ACM Int. Conf. on Web Search and Data Mining, p.603―612. [
CrossRef
Google scholar
|
[7] |
Bonchi, F., Castillo, C., Gionis, A.,
CrossRef
Google scholar
|
[8] |
Box, G.E.P., 2008. Time Series Analysis: Forecasting and Control. Wiley. [
CrossRef
Google scholar
|
[9] |
Boyd, S., Parikh, N., Chu, E.,
CrossRef
Google scholar
|
[10] |
Cha, M., Haddadi, H., Benevenuto, F.,
|
[11] |
Cui, P., Jin, S.F., Yu, L.Y.,
CrossRef
Google scholar
|
[12] |
Dholakia, U.M., Bagozzi, R.P., Pearo, L.K., 2004. A social influence model of consumer participation in networkand small-group-based virtual communities. Int. J. Res. Market., 21(3): 241―263. [
CrossRef
Google scholar
|
[13] |
Donoho, D.L., Johnstone, I.M., 1995. Adapting to unknown smoothness via wavelet shrinkage. J. Am. Statist. Assoc., 90(432): 1200―1224. [
CrossRef
Google scholar
|
[14] |
Duong, Q., Wellman, M.P., Singh, S.P., 2011. Modeling information diffusion in networks with unobserved links. SocialCom/PASSAT, p.362―369.
|
[15] |
Eagle, N., Pentland, A., Lazer, D., 2009. Inferring friendship network structure by using mobile phone data. PNAS, 106(36): 15274―15278. [
CrossRef
Google scholar
|
[16] |
Friedman, J., Hastie, T., Höfling, H.,
CrossRef
Google scholar
|
[17] |
Gomez-Rodriguez, M., Schölkopf, B., 2012. Influence maximization in continuous time diffusion networks. Int. Conf. on Machine Learning.
|
[18] |
Gomez-Rodriguez, M., Leskovec, J., Krause, A., 2010. Inferring networks of diffusion and influence. Proc. 16th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.1019―1028. [
CrossRef
Google scholar
|
[19] |
Guille, A., Hacid, H., Favre, C.,
CrossRef
Google scholar
|
[20] |
Hoefling, H., 2010. A path algorithm for the fused lasso signal approximator. J. Comput. Graph. Statist., 19(4): 984―1006. [
CrossRef
Google scholar
|
[21] |
Long, B., Zhang, Z.F., Yu, P.S., 2007. A probabilistic framework for relational clustering. Proc. 13th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.470―479. [
CrossRef
Google scholar
|
[22] |
Myers, S.A., Leskovec, J., 2012. Clash of the contagions: cooperation and competition in information diffusion. IEEE 12th Int. Conf. on Data Mining, p.539―548. [
CrossRef
Google scholar
|
[23] |
Myers, S.A., Zhu, C.G., Leskovec, J., 2012. Information diffusion and external influence in networks. Proc. 18th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.33―41. [
CrossRef
Google scholar
|
[24] |
Onnela, J.P., Reed-Tsochas, F., 2010. Spontaneous emergence of social influence in online systems. PNAS, 107(43): 18375―18380. [
CrossRef
Google scholar
|
[25] |
Romero, D.M., Galuba, W., Asur, S.,
CrossRef
Google scholar
|
[26] |
Saito, K., Ohara, K., Yamagishi, Y.,
CrossRef
Google scholar
|
[27] |
Tang, J., Sun, J.M., Wang, C.,
CrossRef
Google scholar
|
[28] |
Tibshirani, R., Saunders, M., Rosset, S.,
CrossRef
Google scholar
|
[29] |
Tsur, O., Rappoport, A., 2012. What’s in a hashtag?: content based prediction of the spread of ideas in microblogging communities. Proc. 5th ACM Int. Conf. on Web Search and Data Mining, p.643―652. [
CrossRef
Google scholar
|
[30] |
Wu, S.M., Hofman, J.M., Mason, W.A.,
CrossRef
Google scholar
|
[31] |
Yang, J., Leskovec, J., 2010. Modeling information diffusion in implicit networks. IEEE 10th Int. Conf. on Data Mining, p.599―608.
|
[32] |
Zhang, Z.F., Salerno, J.J., Yu, P.S., 2003. Applying data mining in investigating money laundering crimes. Proc. 9th ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining, p.747―752. [
CrossRef
Google scholar
|
/
〈 | 〉 |