Predicting Probability of Investment Based on Investor’s Facial Expression in a Startup Funding Pitch

Autor: Arya Tri Prabawa, Merel Jung, Kostas Stoitsas, Werner Liebregts, Itir Önal Ertuğrul
Přispěvatelé: Sub Social and Affective Computing, Social and Affective Computing, Cognitive Science & AI, Department of Methodology and Statistics, Data Entrepreneurship, Tilburg Institute of Governance
Jazyk: angličtina
Rok vydání: 2022
Předmět:
Zdroj: Proceedings of BNAIC/BeNeLearn 2022
Tilburg University-PURE
Popis: Presenting an idea is a critical social interaction, especially in a startup funding pitch setting where initial investment is at stake. Understanding a listener’s facial expression can then become extremely valuable in informing the level of engagement reached by the presenter. Predicting engagement level in other settings, such as an online study environment, has been explored in previous research, but none have explored to what extent an investor’s facial expression can predict the investor’s engagement during a funding pitch and in return predict the investor’s probability to invest. In this study, we propose to use Long Short-Term Memory (LSTM) networks along with facial action units (AUs), facial features extracted with Convolutional Neural Net- works (CNN), and the combination of both as features for automated prediction of probability of investment. The results show a promising prospect for the proposed LSTM models. Models using CNN features or combined AU and CNN features outperformed the AU-only model.
Databáze: OpenAIRE