4.6 Article

A Multimodal Affective Sensing Model for Constructing a Personality-Based Financial Advisor System

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 19, Pages -

Publisher

MDPI
DOI: 10.3390/app121910066

Keywords

affective computing; artificial intelligence; human-computer interaction; behavioral finance; personality traits

Funding

  1. National Science and Technology Council (Taiwan) [109-2221E-992-068]

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Successful investments not only require financial expertise and market information, but also individual personality traits. A multimodal personality-recognition system was developed to analyze investors' traits, showing more accuracy than unimodal models and a correlation between personality traits and risk tolerance. Experimental results demonstrated high performance of the system in predicting investors' personalities.
To achieve successful investments, in addition to financial expertise and knowledge of market information, a further critical factor is an individual's personality. Decisive people tend to be able to quickly judge when to invest, while calm people can analyze the current situation more carefully and make appropriate decisions. Therefore, in this study, we developed a multimodal personality-recognition system to understand investors' personality traits. The system analyzes the personality traits of investors when they share their investment experiences and plans, allowing them to understand their own personality traits before investing. To perform system functions, we collected digital human behavior data through video-recording devices and extracted human behavior features using video, speech, and text data. We then used data fusion to fuse human behavior features from heterogeneous data to address the problem of learning only one-sided information from a single modality. Through several experiments, we demonstrated that multimodal (i.e., three different signal inputs) personality trait analysis is more accurate than unimodal models. We also used statistical methods and questionnaires to evaluate the correlation between the investor's personality traits and risk tolerance. It was found that investors with higher openness, extraversion, and lower neuroticism personality traits took higher risks, which is similar to research findings in the field of behavioral finance. Experimental results show that, in a case study, our multimodal personality prediction system exhibits high performance with highly accurate prediction scores in various metrics.

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