期刊论文详细信息
Frontiers in Psychology
A Simplified Model of Choice Behavior under Uncertainty
Ching-Hung Lin1 
关键词: Iowa Gambling Task;    expected utility model;    prospect utility model;    dynamic-uncertainty situations;    gain-loss frequency;    loss aversion;    delta learning rule;    prominent deck B phenomenon;   
DOI  :  10.3389/fpsyg.2016.01201
学科分类:心理学(综合)
来源: Frontiers
PDF
【 摘 要 】

The Iowa Gambling Task (IGT) has been standardized as a clinical assessment tool (Bechara, 2007). Nonetheless, numerous research groups have attempted to modify IGT models to optimize parameters for predicting the choice behavior of normal controls and patients. A decade ago, most researchers considered the expected utility (EU) model (Busemeyer and Stout, 2002) to be the optimal model for predicting choice behavior under uncertainty. However, in recent years, studies have demonstrated that models with the prospect utility (PU) function are more effective than the EU models in the IGT (Ahn et al., 2008). Nevertheless, after some preliminary tests based on our behavioral dataset and modeling, it was determined that the Ahn et al. (2008) PU model is not optimal due to some incompatible results. This study aims to modify the Ahn et al. (2008) PU model to a simplified model and used the IGT performance of 145 subjects as the benchmark data for comparison. In our simplified PU model, the best goodness-of-fit was found mostly as the value of α approached zero. More specifically, we retested the key parameters α, λ, and A in the PU model. Notably, the influence of the parameters α, λ, and A has a hierarchical power structure in terms of manipulating the goodness-of-fit in the PU model. Additionally, we found that the parameters λ and A may be ineffective when the parameter α is close to zero in the PU model. The present simplified model demonstrated that decision makers mostly adopted the strategy of gain-stay loss-shift rather than foreseeing the long-term outcome. However, there are other behavioral variables that are not well revealed under these dynamic-uncertainty situations. Therefore, the optimal behavioral models may not have been found yet. In short, the best model for predicting choice behavior under dynamic-uncertainty situations should be further evaluated.

【 授权许可】

CC BY   

【 预 览 】
附件列表
Files Size Format View
RO201901221561413ZK.pdf 4682KB PDF download
  文献评价指标  
  下载次数:14次 浏览次数:5次