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Contrasting effects of feature-based statistics on the categorisation and basic-level identification of visual objects

机译:基于特征的统计对视觉对象的分类和基本级别识别的对比影响

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Conceptual representations are at the heart of our mental lives, involved in every aspect of cognitive functioning. Despite their centrality, a long-standing debate persists as to how the meanings of concepts are represented and processed. Many accounts agree that the meanings of concrete concepts are represented by their individual features, but disagree about the importance of different feature-based variables: some views stress the importance of the information carried by distinctive features in conceptual processing, others the features which are shared over many concepts, and still others the extent to which features co-occur. We suggest that previously disparate theoretical positions and experimental findings can be unified by an account which claims that task demands determine how concepts are processed in addition to the effects of feature distinctiveness and co-occurrence. We tested these predictions in a basic-level naming task which relies on distinctive feature information (Experiment 1) and a domain decision task which relies on shared feature information (Experiment 2). Both used large-scale regression designs with the same visual objects, and mixed-effects models incorporating participant, session, stimulus-related and feature statistic variables to model the performance. We found that concepts with relatively more distinctive and more highly correlated distinctive relative to shared features facilitated basic-level naming latencies, while concepts with relatively more shared and more highly correlated shared relative to distinctive features speeded domain decisions. These findings demonstrate that the feature statistics of distinctiveness (shared vs. distinctive) and correlational strength, as well as the task demands, determine how concept meaning is processed in the conceptual system.
机译:概念表示是我们心理生活的核心,涉及认知功能的各个方面。尽管具有中心性,但关于如何表示和处理概念含义的争论仍在进行。许多论述都同意具体概念的含义由其各自的特征表示,但是不同意基于特征的变量的重要性:有些观点强调概念过程中独特特征所携带的信息的重要性,另一些观点则强调了共享特征的重要性。在许多概念上,还有其他一些概念同时出现的程度。我们建议,可以通过一个声称任务需求确定除概念独特性和共现效果外还如何处理概念的帐户来统一以前不同的理论位置和实验结果。我们在依赖独特特征信息的基本级别命名任务(实验1)和依赖共享特征信息的领域决策任务(实验2)中测试了这些预测。两者都使用具有相同视觉对象的大规模回归设计,以及结合参与者,会话,刺激相关和特征统计变量的混合效果模型来对性能进行建模。我们发现,相对于共享特征而言,具有相对更独特和更高相关性的独特性的概念促进了基本级别的命名延迟,而相对于独特特征而言,具有相对更多共享性和更高相关性的共享性的概念加快了领域决策的速度。这些发现表明,独特性(共享与独特)和相关强度的特征统计以及任务要求决定了在概念系统中如何处理概念意义。

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