Keep it simple - A case study of model development in the context of the Dynamic Stocks and Flows (DSF) task

M. Halbrügge
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引用次数: 4

Abstract

Keep it simple - A case study of model development in the context of the Dynamic Stocks and Flows (DSF) task This paper describes the creation of a cognitive model submitted to the ‘Dynamic Stocks and Flows’ (DSF) modeling challenge. This challenge aims at comparing computational cognitive models for human behavior during an open ended control task. Participants in the modeling competition were provided with a simulation environment and training data for benchmarking their models while the actual specification of the competition task was withheld. To meet this challenge, the cognitive model described here was designed and optimized for generalizability. Only two simple assumptions about human problem solving were used to explain the empirical findings of the training data. In-depth analysis of the data set prior to the development of the model led to the dismissal of correlations or other parametric statistics as goodness-of-fit indicators. A new statistical measurement based on rank orders and sequence matching techniques is being proposed instead. This measurement, when being applied to the human sample, also identifies clusters of subjects that use different strategies for the task. The acceptability of the fits achieved by the model is verified using permutation tests.
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保持简单-动态库存和流量(DSF)任务背景下的模型开发案例研究
保持简单-动态库存和流量(DSF)任务背景下模型开发的案例研究本文描述了提交给“动态库存和流量”(DSF)建模挑战的认知模型的创建。本挑战旨在比较开放式控制任务中人类行为的计算认知模型。建模竞赛的参与者被提供了模拟环境和训练数据,用于对其模型进行基准测试,而竞赛任务的实际规范则被保留。为了应对这一挑战,本文描述的认知模型被设计和优化为具有通用性。只有两个关于人类解决问题的简单假设被用来解释训练数据的实证结果。在开发模型之前对数据集进行深入分析导致相关性或其他参数统计数据作为拟合优度指标被驳回。提出了一种新的基于秩序和序列匹配技术的统计度量方法。当将这种测量方法应用于人类样本时,还可以识别出使用不同策略完成任务的受试者群。通过置换试验验证了模型拟合的可接受性。
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