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Modeling Decisions from Experience Among Frequent and Infrequent Switchers via Strategy-Based and Instance-Based Models

机译:通过基于策略和基于实例的模型来模拟频繁和不经常的切换器之间的经验模拟

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In Decisions from Experience (DFE) research decision-makers search for information before making a final consequential choice in the sampling paradigm. Although DFE research involving the sampling paradigm has focused on accounting for information search and final choices using computational cognitive models. However, it remains to be seen how models implementing strategies (strategy-based models) and models relying upon memory retrievals (instance-based models) perform for final choices of participants with different switching behaviors. In this paper, we perform an individual-differences analysis and test the ability of strategy-based and instance-based models to explain final choices of participants with different switching behavior in the sampling paradigm. An instance-based model, which relies on recency and frequency memory processes, is calibrated to final choices of participants exhibiting frequent switching or infrequent switching between options. Also, we develop two strategy models: a summary strategy model and a round-wise strategy model. Both these models rely upon different switching behaviors and subsequent decision rules to derive choices. Results revealed that at the aggregate level, both the strategy-based and instance-based models explained consequential choices similarly when participants exhibited frequent switching. However, the instance-based model performed better than the strategy-based models when participants exhibited infrequent switching. Furthermore, at the individual level, the instance-based model was among the best models to fit to both frequent and infrequent groups. We highlight the implications of modeling experiential decisions using strategy-based and Instance-based models.
机译:在经验(DFE)的决定中,研究决策者在采样范式中进行最终的相应选择之前搜索信息。虽然涉及采样范式的DFE研究专注于使用计算认知模型的信息搜索和最终选择。但是,它仍然可以看出如何实现策略(基于策略的模型)和模型依赖于内存检索(基于实例的模型)的模型来表达用于具有不同切换行为的最终选择的模型。在本文中,我们执行个人差异分析,并测试基于策略和基于实例的模型的能力,以解释采样范例中具有不同切换行为的参与者的最终选择。基于实例的模型,依赖于新近记录和频率存储器进程,被校准到参与者的最终选择,这些参与者在选项之间展示频繁切换或不常见的切换。此外,我们开发了两个策略模型:摘要策略模型和圆形战略模型。这两个模型都依赖于不同的交换行为和随后的决策规则来获得选择。结果表明,在聚合水平,基于战略和基于实例的模型在参与者展示频繁切换时,类似地解释了后续选择。然而,基于实例的模型比参与者呈现不频繁的切换时比基于策略的模型更好。此外,在个人级别,基于实例的模型是适合频繁和不常见的群体的最佳模型之一。我们强调了使用基于策略和基于实例的模型建模体验决策的影响。

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