Identification and estimation of endogenous peer effects using partial network data from multiple reference groups
There has been a considerable amount of interest in the empirical investigation of social influence in the marketing and economics literature in the last decade or so. Among the many different empirical models applied for such investigations, the most common class of model is the linear-in-means mod...
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sg-ntu-dr.10356-1595702023-05-19T07:31:18Z Identification and estimation of endogenous peer effects using partial network data from multiple reference groups Reza, Sadat Manchanda, Puneet Chong, Juin-Kuan Nanyang Business School Business::Marketing Peer Effects Social Influence There has been a considerable amount of interest in the empirical investigation of social influence in the marketing and economics literature in the last decade or so. Among the many different empirical models applied for such investigations, the most common class of model is the linear-in-means model. These models can be used to examine whether social influence is truly a result of agents affecting each other through their choices simultaneously (endogenous effect) or of having similar taste and characteristics (homophily). However, the two effects are not separately identified in general in the standard linear-in-means model unless data on all members of an individual's network are available. With data on a sample of individuals from a network, these effects are not identified. In this research, we leverage a very natural aspect of social settings, namely that consumers are usually part of multiple-as opposed to single-networks. We discuss the sufficient conditions for identification when the standard linear-in-means model is extended to allow for multiple sources of social influence. We also show how the additional variation generated by more than one source of social influence actually allows estimation of endogenous effects with sample data.We demonstrate the feasibility of our approach via simulation and on the National Longitudinal Study on Adolescent Health data, which has been used in a number of studies examining social influence. Our approach is, therefore, likely to be useful in typical marketing settings. 2022-06-28T00:43:27Z 2022-06-28T00:43:27Z 2021 Journal Article Reza, S., Manchanda, P. & Chong, J. (2021). Identification and estimation of endogenous peer effects using partial network data from multiple reference groups. Management Science, 67(8), 5070-5105. https://dx.doi.org/10.1287/mnsc.2020.3769 0025-1909 https://hdl.handle.net/10356/159570 10.1287/mnsc.2020.3769 2-s2.0-85106078169 8 67 5070 5105 en Management Science © 2021 INFORMS. All rights reserved. |
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Business::Marketing Peer Effects Social Influence Reza, Sadat Manchanda, Puneet Chong, Juin-Kuan Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
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There has been a considerable amount of interest in the empirical investigation of social influence in the marketing and economics literature in the last decade or so. Among the many different empirical models applied for such investigations, the most common class of model is the linear-in-means model. These models can be used to examine whether social influence is truly a result of agents affecting each other through their choices simultaneously (endogenous effect) or of having similar taste and characteristics (homophily). However, the two effects are not separately identified in general in the standard linear-in-means model unless data on all members of an individual's network are available. With data on a sample of individuals from a network, these effects are not identified. In this research, we leverage a very natural aspect of social settings, namely that consumers are usually part of multiple-as opposed to single-networks. We discuss the sufficient conditions for identification when the standard linear-in-means model is extended to allow for multiple sources of social influence. We also show how the additional variation generated by more than one source of social influence actually allows estimation of endogenous effects with sample data.We demonstrate the feasibility of our approach via simulation and on the National Longitudinal Study on Adolescent Health data, which has been used in a number of studies examining social influence. Our approach is, therefore, likely to be useful in typical marketing settings. |
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Nanyang Business School |
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Nanyang Business School Reza, Sadat Manchanda, Puneet Chong, Juin-Kuan |
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Article |
author |
Reza, Sadat Manchanda, Puneet Chong, Juin-Kuan |
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Reza, Sadat |
title |
Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
title_short |
Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
title_full |
Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
title_fullStr |
Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
title_full_unstemmed |
Identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
title_sort |
identification and estimation of endogenous peer effects using partial network data from multiple reference groups |
publishDate |
2022 |
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https://hdl.handle.net/10356/159570 |
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1772828040168996864 |