Comparison of linear and nonlinear models in explanation of dishonest behavior

Date issued

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Západočeská univerzita v Plzni

Abstract

Dishonest behavior impacts various sectors, including environmental protection, production quality, finance, and taxation. This study compares linear and nonlinear models for explaining behavioral data obtained through a laboratory experiment with economics students at the University of West Bohemia.Participants chose between honest production at a higher cost or dishonest production to save costs. The experiment varied inspection probabilities and introduced punishment for dishonesty or rewards for honesty. Personality traits (MBTI) and risk aversion (Holt-Laury measurement) were also assessed. Both linear and nonlinear (GAM, neural networks) models produced similar results. Increased inspection significantly reduced dishonesty (p < 0.01), while punishment and reward had no significant effect (p > 0.10). Thinking-oriented individuals were more prone to dishonesty (p ≈ 0.05), and higher risk aversion correlated with lower dishonest behavior (p ≈ 0.10). All models achieved a similar power to predict dishonest behavior.

Description

Subject(s)

dishonest behavior, Generalized Additive Model, Generalized Linear Model, laboratory experiment, neural network

Citation