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Statistical Learning Is Constrained to Less Abstract Patterns in Complex Sensory Input (but not the Least)

机译:统计学习仅限于复杂感官输入中的抽象模式较少(但不是最少)

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摘要

The influence of statistical information on behavior (either through learning or adaptation) is quickly becoming foundational to many domains of cognitive psychology and cognitive neuroscience, from language comprehension to visual development. We investigate a central problem impacting these diverse fields: when encountering input with rich statistical information, are there any constraints on learning? This paper examines learning outcomes when adult learners are given statistical information across multiple levels of abstraction simultaneously: from abstract, semantic categories of everyday objects to individual viewpoints on these objects. After revealing statistical learning of abstract, semantic categories with scrambled individual exemplars (Exp. 1), participants viewed pictures where the categories as well as the individual objects predicted picture order (e.g., bird1—dog1, bird2—dog2). Our findings suggest that participants preferentially encode the relationships between the individual objects, even in the presence of statistical regularities linking semantic categories (Exps. 2 and 3). In a final experiment we investigate whether learners are biased towards learning object-level regularities or simply construct the most detailed model given the data (and therefore best able to predict the specifics of the upcoming stimulus) by investigating whether participants preferentially learn from the statistical regularities linking individual snapshots of objects or the relationship between the objects themselves (e.g., bird_picture1— dog_picture1, bird_picture2—dog_picture2). We find that participants fail to learn the relationships between individual snapshots, suggesting a bias towards object-level statistical regularities as opposed to merely constructing the most complete model of the input. This work moves beyond the previous existence proofs that statistical learning is possible at both very high and very low levels of abstraction (categories vs. individual objects) and suggests that, at least with the current categories and type of learner, there are biases to pick up on statistical regularities between individual objects even when robust statistical information is present at other levels of abstraction. These findings speak directly to emerging theories about how systems supporting statistical learning and prediction operate in our structure-rich environments. Moreover, the theoretical implications of the current work across multiple domains of study is already clear: statistical learning cannot be assumed to be unconstrained even if statistical learning has previously been established at a given level of abstraction when that information is presented in isolation.
机译:从语言理解到视觉发展,统计信息对行为的影响(通过学习或适应)正在迅速成为认知心理学和认知神经科学许多领域的基础。我们研究了一个影响这些不同领域的中心问题:遇到具有丰富统计信息的输入时,学习是否受到任何限制?本文研究了成人学习者同时获得跨多个抽象层次的统计信息时的学习成果:从日常对象的抽象,语义类别到这些对象的个体观点。在利用混乱的个体范例揭示了抽象的语义类别的统计学习后(实验1),参与者查看了图片以及类别和个体对象预测图片顺序的图片(例如bird1-dog1,bird2-dog2)。我们的发现表明,即使存在链接语义类别的统计规则,参与者也优先编码各个对象之间的关系(实验2和3)。在最后的实验中,我们通过调查参与者是否优先从统计规律中学习,调查了学习者是否偏向于学习对象级规律,还是只是简单地构造了给定数据的最详细模型(从而最有能力预测即将到来的刺激的细节)。链接对象的各个快照或对象本身之间的关系(例如,bird_picture1-dog_picture1,bird_picture2-dog_picture2)。我们发现参与者无法学习单个快照之间的关系,这表明对对象级统计规律存在偏见,而不是仅仅构建最完整的输入模型。这项工作超越了先前的存在证明,即在非常高和非常低的抽象水平(类别与单个对象)上都可以进行统计学习,并且表明,至少对于当前的类别和学习者类型,存在选择偏见即使在其他抽象级别上都存在可靠的统计信息时,也要根据各个对象之间的统计规律性进行调整。这些发现直接说明了有关支持统计学习和预测的系统如何在我们结构丰富的环境中运行的新兴理论。而且,当前研究跨多个研究领域的理论含义已经很清楚:即使以前以给定的抽象级别建立统计学习,而当该信息被单独呈现时,也不能假定统计学习不受限制。

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