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Adaptive stimulus selection for multi-alternative psychometric functions with lapses

机译:具有时滞的多种替代心理测验功能的自适应刺激选择

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摘要

Psychometric functions (PFs) quantify how external stimuli affect behavior, and they play an important role in building models of sensory and cognitive processes. Adaptive stimulus-selection methods seek to select stimuli that are maximally informative about the PF given data observed so far in an experiment and thereby reduce the number of trials required to estimate the PF. Here we develop new adaptive stimulus-selection methods for flexible PF models in tasks with two or more alternatives. We model the PF with a multinomial logistic regression mixture model that incorporates realistic aspects of psychophysical behavior, including lapses and multiple alternatives for the response. We propose an information-theoretic criterion for stimulus selection and develop computationally efficient methods for inference and stimulus selection based on adaptive Markov-chain Monte Carlo sampling. We apply these methods to data from macaque monkeys performing a multi-alternative motion-discrimination task and show in simulated experiments that our method can achieve a substantial speed-up over random designs. These advances will reduce the amount of data needed to build accurate models of multi-alternative PFs and can be extended to high-dimensional PFs that would be infeasible to characterize with standard methods.
机译:心理测量功能(PF)可以量化外部刺激如何影响行为,并且它们在建立感官和认知过程的模型中起着重要作用。自适应刺激选择方法力图选择迄今为止对实验中观察到的数据最大程度地了解PF的刺激,从而减少估计PF所需的试验次数。在这里,我们为具有两个或更多选择的任务中的灵活PF模型开发了新的自适应刺激选择方法。我们使用多项Logistic回归混合模型对PF进行建模,该模型结合了心理物理行为的现实方面,包括失误和响应的多种选择。我们提出了一种刺激选择的信息理论标准,并开发了基于自适应马尔可夫链蒙特卡洛采样的推理和刺激选择有效计算方法。我们将这些方法应用于猕猴执行多轮运动判别任务的数据,并在模拟实验中证明,我们的方法可以大大提高随机设计的速度。这些进步将减少建立多方案PF的精确模型所需的数据量,并且可以扩展到无法用标准方法表征的高维PF。

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