首页> 外文期刊>Attention, perception & psychophysics >Too much model, too little data: How a maximum-likelihood fit of a psychometric function may fail, and how to detect and avoid this
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Too much model, too little data: How a maximum-likelihood fit of a psychometric function may fail, and how to detect and avoid this

机译:模型过多,数据太少:心理学函数的最大可能性如何变得失败,以及如何检测和避免这一点

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摘要

Maximum-likelihood estimation of the parameters of a psychometric function typically occurs through an iterative search for the maximum value in the likelihood function defined across the parameter space. This procedure is subject to failure. First, iterative search procedures may converge on a local, not global, maximum in the likelihood function. The procedure also fails when the likelihood function does not contain a maximum. This is the case when either a step function or a constant function is associated with a higher likelihood than the model can attain with finite parameter values. In such cases iterative search procedures may erroneously report having successfully converged on a maximum in the likelihood function. This will lead not only to inaccurate models for the observed data, butmay also lead to inaccurate results regarding the reliability of parameter estimates, goodness-offit of the model, or model selection. I describe a method by which such false convergences can be reliably detected. I also present results of simulations that systematically investigate how stimulus placement, number of trials, parameters estimated, task (2AFC, 4AFC, etc.), and whether the lapse rate is allowed to vary affect the probability that the likelihood function will not contain a maximum. Based on the results of the simulations recommendations are made regarding experimental design and modeling choices. Software that implements the method is made available for downloading.
机译:音乐测量函数参数的最大似然估计通常通过迭代搜索参数空间定义的似然函数中的最大值。此程序受到失败。首先,迭代搜索过程可能会聚在本地,而不是全局,在可能性函数中的最大值。当似然函数不包含最大值时,该过程也会失败。这是当阶跃函数或常量函数与比模型更高的似然相关的情况时可以获得有限参数值。在这种情况下,迭代搜索过程可能会错误地报告在似然函数最多成功融合。这不仅会导致观察到的数据不准确的模型,但是也会导致参数估计的可靠性,模型的善良偏移或模型选择的不准确的结果。我介绍了一种方法,通过该方法可以可靠地检测到这种错误的收敛。我还提出了系统地调查刺激展示位置,试验数量,估计,任务数,任务(2AFC,4AFC等)的结果的结果,以及允许失效率是否会影响似然函数不包含a的概率最大值。根据模拟结果,建议是关于实验设计和建模选择的建议。实现该方法的软件可用于下载。

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