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Dynamical trajectories in category learning

机译:类别学习中的动态轨迹

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Category learning has traditionally been studied by examining how percentage correct changes with experience (i.e., in the form of learning curves). An alternative and more powerful approach is to examine dynamical learning trajectories-that is, to examine how the parameters that describe the current state of the model change with experience. We describe results from a new experimental paradigm in which empirical-learning trajectories are directly observable. In these experiments, participants learned two categories of spatial position, and they were constrained to identify and use a linear decision bound on every trial. The dependent variables of principal interest were the slope and the intercept of the bound used on each trial. Data from two experiments supported the following conclusions. (1) Gradient descent provided a poor description of the empirical trajectories. (2) The magnitude of changes in decision strategy decreased with experience at a rate that was faster than that predicted by gradient descent. (3) Learning curves suffered from substantial identifiability problems.
机译:传统上,类别学习是通过检查百分比如何随经验正确改变(即以学习曲线的形式)来进行研究的。另一种更强大的方法是检查动态学习轨迹,即检查描述模型当前状态的参数如何随经验变化。我们描述了一个新的实验范式的结果,在该范式中可以直接观察到经验学习轨迹。在这些实验中,参与者学习了两类空间位置,并且他们被限制于识别和使用每个试验的线性决策。主要关注的因变量是每次试验中使用的斜率和边界的截距。来自两个实验的数据支持以下结论。 (1)梯度下降对经验轨迹的描述很差。 (2)决策策略的变化幅度随着经验的增加而降低,其速率快于梯度下降所预测的速率。 (3)学习曲线遭受大量的可识别性问题。

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