TY - JOUR
T1 - Mega or Micro? Influencer Selection Using Follower Elasticity
AU - Tian, Zijun
AU - Dew, Ryan
AU - Iyengar, Raghuram
N1 - Publisher Copyright:
© American Marketing Association 2023.
PY - 2024/6
Y1 - 2024/6
N2 - Influencer marketing, in which companies sponsor social media personalities to promote their brands, has exploded in popularity in recent years. One common criterion for selecting an influencer partner is popularity. While some firms collaborate with “mega” influencers with millions of followers, other firms partner with “micro” influencers with only several thousand followers, but who also cost less to sponsor. To quantify this trade-off between popularity and cost, the authors develop a framework for estimating the follower elasticity of impressions (FEI), which measures a video's percentage gain in impressions (i.e., views) corresponding to a percentage increase in the number of followers of its creator. Computing FEI involves estimating the causal effect of an influencer's popularity on the view counts of their videos, which is achieved through a combination of (1) a unique data set collected from TikTok, (2) a representation learning model for quantifying video content, and (3) a machine learning–based causal inference method. The authors find that FEI is always positive, averaging.10, but often nonlinearly related to follower size. They examine the factors that predict variation in these FEI curves and show how firms can use these results to better determine influencer partnerships.
AB - Influencer marketing, in which companies sponsor social media personalities to promote their brands, has exploded in popularity in recent years. One common criterion for selecting an influencer partner is popularity. While some firms collaborate with “mega” influencers with millions of followers, other firms partner with “micro” influencers with only several thousand followers, but who also cost less to sponsor. To quantify this trade-off between popularity and cost, the authors develop a framework for estimating the follower elasticity of impressions (FEI), which measures a video's percentage gain in impressions (i.e., views) corresponding to a percentage increase in the number of followers of its creator. Computing FEI involves estimating the causal effect of an influencer's popularity on the view counts of their videos, which is achieved through a combination of (1) a unique data set collected from TikTok, (2) a representation learning model for quantifying video content, and (3) a machine learning–based causal inference method. The authors find that FEI is always positive, averaging.10, but often nonlinearly related to follower size. They examine the factors that predict variation in these FEI curves and show how firms can use these results to better determine influencer partnerships.
KW - causal inference
KW - deep learning
KW - heterogeneous treatment effects
KW - influencer marketing
KW - representation learning
KW - video data
UR - https://www.scopus.com/pages/publications/85180169591
U2 - 10.1177/00222437231210267
DO - 10.1177/00222437231210267
M3 - Article
AN - SCOPUS:85180169591
SN - 0022-2437
VL - 61
SP - 472
EP - 495
JO - Journal of Marketing Research
JF - Journal of Marketing Research
IS - 3
ER -