Abstract
Increased similarity with one’s friends’ choices in a social network leads a user to engage further with the social network. Participation is modelled based on user utility derived both from participating in preferred events and from joint participation with friends. The model implies that users will participate more as they learn that they share more interests with their friends. These implications are tested using panel data from an online video gaming network in which users can learn the characteristics of friends’ recent game play behaviour. The focal user’s time on the platform increases substantially as friend’s choices become more similar to the focal user’s behaviour. These results are robust to multiple possible sources of endogeneity.
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The quit date is inferred from the last gaming session unless censored by the last week in the sample.
Ma et al., (2015) similarly use genre in their study of the role of network homophily and influence on the purchase of ringtones.
Due to compatibility issues during this early rollout period, sample includes only a few PlayStation or Wii users.
These measures entail a number of modeling choices. Alternatives to duration of time spent by user i in category a could be the number of gaming sessions or the number of game titles played. The distance measure need not have been strictly Euclidean and could have been, for example absolute value of the difference in values. And each category of age-appropriateness, platform, and genre, need not have been weighted equally.
The median G2 size was just four friends.
Attenuation bias results from measurement error. Even measurement errors that are independent from the variables of interest will affect the calculation of the coefficients. The OLS estimate, \({\hat{\beta}}^{OLS}=\mathit{\operatorname{cov}}\left(y,x\right)/\mathit{\operatorname{var}}(x)\) is replaced by \({\hat{\beta}}^{OLS}=\mathit{\operatorname{cov}}\left(y,x+\epsilon \right)/\mathit{\operatorname{var}}\left(x+\epsilon \right)\). The measurement error, ϵ, does not affect the numerator but inflates the denominator.
Valid instruments replace x + ϵ with first stage estimates, proj(x + ϵ| z), which will be free of the measurement error. Thus, \({\hat{\beta}}^{IV}=\mathit{\operatorname{cov}}\left(y, proj\left(x+\epsilon |z\right)\right)/\mathit{\operatorname{var}}\left( proj\left(x+\epsilon |z\right)\right)\) has both an unbiased numerator and an unbiased denominator.
References
Aiello, L. M., Barrat, A., Schifanella, R., Cattuto, C., Markines, B., & Menczer, F. (2012). Friendship prediction and homophily in social media. ACM Transaction on the Web, 6(2), 1–33. https://doi.org/10.1145/2180861.2180866
Albert, L. J., Aggarwal, N., & Hill, T. R. (2014). Influencing customer’s purchase intentions through firm participation in online consumer communities. Electronic Markets, 24(4), 285–295. https://doi.org/10.1007/s12525-014-0169-3
Arakji, R. Y., & Lang, K. R. (2007). Digital consumer networks and producer-consumer collaboration: Innovation and product development in the video game industry. Journal of Management Information Systems, 24(2), 195–219. https://doi.org/10.2753/MIS0742-1222240208
Aral, S., & Walker, D. (2011). Creating social contagion through viral product design: A randomized trial of peer influence in networks. Management Science, 57(9), 1623–1639. https://doi.org/10.1287/mnsc.1110.1421
Aral, S., Muchnik, L., & Sundararajan, A. (2009). Distinguishing influence-based contagion from homophily-driven diffusion in dynamic networks. Proceedings of the National Academy of Sciences of the United States of America, 106(51), 21544–21549. https://doi.org/10.1073/pnas.0908800106
Ascarza, E., & Hardie, B. G. S. (2013). A joint model of usage and churn in contractual settings. Marketing Science, 32(4), 570–590. https://doi.org/10.1287/mksc.2013.0786
Ascarza, E., Ebbes, P., Netzer, O., & Danielson, M. (2017). Beyond the target customer: Social effects of customer relationship management campaigns. Journal of Marketing Research, 54(3), 347–363. https://doi.org/10.1509/jmr.15.0442
BenYishay, A., & Mobarak, A. M. (2019). Social learning and incentives for experimentation and communication. The Review of Economic Studies, 86(3), 976–1009. https://doi.org/10.1093/restud/rdy039
Boardman, J. D., Domingue, B. W., & Fletcher, J. M. (2012). How social and genetic factors predict friendship networks. Proceedings of the National Academy of Sciences of the United States of America, 109(52), 17377–17381. https://doi.org/10.1073/pnas.1208975109
Bolton, R. N. (1988). A dynamic model of the duration of the customer’s relationship with a continuous service provider: The role of satisfaction. Marketing Science, 17(1), 45–65. https://doi.org/10.1287/mksc.17.1.45
Bolton, R. N., & Lemon, K. N. (1999). A dynamic model of customers’ usage of services: Usage as an antecedent and consequence of satisfaction. Journal of Marketing Research, 36(2), 171–186. https://doi.org/10.1177/002224379903600203
Bramoullé, Y., Djebbari, H., & Fortin, B. (2009). Identification of peer effects through social networks. Journal of Econometrics, 150(1), 41–55. https://doi.org/10.1016/j.jeconom.2008.12.021
Burke, M., Marlow, C., & Lento, T. (2009) Feed me: Motivating newcomer contribution in social network sites. Proceeding CHI '09 Proceedings of the SIGCHI Conference on Human Factors in Computing Systems; Boston, MA, pp 945–954.
Carmi, E., Oestreicher-Singer, G., Stettner, U., & Sundararajan, A. (2017). Is Oprah contagious? The depth of diffusion of demand shocks in a product network. MIS Quarterly, 41(1), 207–221. https://doi.org/10.25300/MISQ/2017/41.1.10
Chu, S. C., & Kim, Y. (2011). Determinants of consumer engagement in electronic word-of-mouth (eWOM) in social networking sites. International Journal of Advertising, 30(1), 47–75. https://doi.org/10.2501/IJA-30-1-047-075
Claussen, J., Kretschmer, T., & Mayrhofer, P. (2013). The effects of rewarding user engagement: The case of Facebook apps. Information Systems Research, 24(1), 186–200. https://doi.org/10.1287/isre.1120.0467
Claussen, J., Engelstätter, B., & Ward, M.R. (2014). Susceptibility and influence in social media word-of-mouth. ZEW Discussion Paper No. 14–129, Mannheim.
Friedkin, N. E. (1982). Information flow through strong and weak ties in lntraorganizational social networks. Social Networks, 3, 273–285. https://doi.org/10.1016/0378-8733(82)90003-X
Graham, B. S. (2017). An econometric model of network formation with degree heterogeneity. Econometrica, 85, 1033–1063. https://doi.org/10.3982/ECTA12679
Hsieh, C. S., & Lee, L. F. (2015). A social interactions model with endogenous friendship formation and selectivity. Journal of Applied Econometrics, 31, 301–319. https://doi.org/10.1002/jae.2426
Huang, D., Markovitch, D. G., & Ying, Y. (2017). Social learning and network externalities in decision making. European Journal of Marketing, 51(1). https://doi.org/10.1108/EJM-10-2015-0703
Huang, Y., Jasin, S., & Manchanda, P. (2019). “Level up”: Leveraging skill and engagement to maximize player game- play in online video games. Information Systems Research, 30(3), 927–947. https://doi.org/10.1287/isre.2019.0839
Kilgo, D. K., Man, Y., Ng, M., Riedl, M. J., & Lacasa-Mas, I. (2018). Reddit’s veil of anonymity: Predictors of engagement and participation in media environments with hostile reputations. Social Media + Society, 4(4). https://doi.org/10.1177/2056305118810216
Kossinets, G., & Watts, D. J. (2006). Empirical analysis of an evolving social network. Science, 311(5757), 88–90. https://doi.org/10.1126/science.1116869
Liu, D., Li, X., & Santhanam, R. (2013). Digital games and beyond: What happens when players compete? MIS Quarterly, 37(1), 111–124.
Ma, L., Krishnan, R., & Montgomery, A. L. (2015). Latent homophily or social influence? An empirical analysis of purchase within a social network. Management Science, 61(2), 454–473. https://doi.org/10.1287/mnsc.2014.1928
Manski, C. (1993). Identification of endogenous social effects: The reflection problem. Review of Economic Studies, 60(3), 531–542. https://doi.org/10.2307/2298123
McPherson, M., Smith-Lovin, L., & Cook, J. M. (2001). Birds of a feather: Homophily in social networks. Annual Review of Sociology, 27(1), 415–444. https://doi.org/10.1146/annurev.soc.27.1.415
Mobius, M., Rosenblat, T. (2014). Social learning in economics. Annual Review of Economics, 6(1), 827–847. https://doi.org/10.1146/annurev-economics-120213-012609.
Moretti, E. (2011). Social learning and peer effects in consumption: Evidence from movie sales. The Review of Economic Studies, 78(1), 356–393. https://doi.org/10.1093/restud/rdq014
Netzer, O., Lattin, J. M., & Srinivasan, V. (2008). A hidden Markov model of customer relationship dynamics. Marketing Science, 27(2), 185–204. https://doi.org/10.1287/mksc.1070.0294
Phan, T. Q., & Airoldi, E. M. (2015). A natural experiment of social network formation and dynamics. Proceedings of the National Academy of Sciences of the United States of America, 112(21), 6595–6600 www.pnas.org/cgi/doi/10.1073/pnas.1404770112
Takac, C., Hinz, O., & Spann, M. (2011). The social embeddedness of decision making: Opportunities and challenges. Electronic Markets, 21(3), 185. https://doi.org/10.1007/s12525-011-0066-y
Yu, S., & Kak, S. (2014). Social network dynamics: An attention economics perspective. In W. Pedrycz & S. M. Chen (Eds.), Social networks: A framework of computational intelligence. Studies in computational intelligence, vol 526. Springer. https://doi.org/10.1007/978-3-319-02993-1_11
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Appendix
Appendix
First stage regressions for Table 3
Focal-G1 Usage | Focal-G1 Genre | Focal-G1 Platform | Focal-G1 ESRB | |
---|---|---|---|---|
Focal-G2 Usage Distance | 0.465*** | −0.009*** | −0.001 | −0.007*** |
(0.004) | (0.001) | (0.002) | (0.002) | |
Focal-G2 Genre Distance | −0.040*** | 0.327*** | 0.008*** | 0.031*** |
(0.003) | (0.003) | (0.003) | (0.003) | |
Focal-G2 Platform Distance | 0.009*** | −0.001 | 0.261*** | 0.002 |
(0.002) | (0.002) | (0.003) | (0.002) | |
Focal-G2 ESRB Distance | −0.012*** | 0.027*** | 0.007** | 0.319*** |
(0.002) | (0.002) | (0.003) | (0.003) | |
G1 Size (1000 s) | 1.276*** | −0.082 | 0.328*** | 0.236*** |
(0.225) | (0.054) | (0.094) | (0.063) | |
G1 Density | 0.014*** | 0.007** | 0.014*** | 0.014*** |
(0.003) | (0.003) | (0.004) | (0.003) | |
G2 Size (1000 s) | 0.020*** | −0.007*** | −0.016*** | −0.010*** |
(0.001) | (0.001) | (0.001) | (0.001) | |
User×week Observations | 1,259,559 | 1,259,559 | 1,259,559 | 1,259,559 |
Number of user fixed effects | 87,332 | 87,332 | 87,332 | 87,332 |
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Ward, M.R. Network engagement from learning friends’ preferences: evidence from a video gaming social network. Electron Markets 32, 1239–1255 (2022). https://doi.org/10.1007/s12525-022-00583-7
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DOI: https://doi.org/10.1007/s12525-022-00583-7