The influence of anchor characteristics on consumers' purchase intention in e-commerce live broadcast - Taking Tiktok live broadcast as an example in China

Authors

  • Ying Chen International College Panyapiwat Institute of Management
  • Patamaporn Pongpaibool Panyapiwat Institute of Management

Keywords:

E-commerce Live Broadcast, Anchor Characteristic, Purchase Intention, TikTok, S-O-R Model

Abstract

Abstract

References

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Published

2024-05-31

How to Cite

Chen, Y. ., & Pongpaibool, P. (2024). The influence of anchor characteristics on consumers’ purchase intention in e-commerce live broadcast - Taking Tiktok live broadcast as an example in China. Journal of ASEAN PLUS Studies, 5(1), 38–52. Retrieved from https://so06.tci-thaijo.org/index.php/aseanplus/article/view/271287