Center for Molecular and Behavioral Neuroscience, Rutgers University Newark, NJ, USA.
Department of Brain and Cognitive Sciences, Ben-Gurion University of the Negev Beer-Sheva, Israel.
Front Psychol. 2014 Apr 16;5:314. doi: 10.3389/fpsyg.2014.00314. eCollection 2014.
For the last four decades, semantic priming-the facilitation in recognition of a target word when it follows the presentation of a semantically related prime word-has been a central topic in research of human cognitive processing. Studies have drawn a complex picture of findings which demonstrated the sensitivity of this priming effect to a unique combination of variables, including, but not limited to, the type of relatedness between primes and targets, the prime-target Stimulus Onset Asynchrony (SOA), the relatedness proportion (RP) in the stimuli list and the specific task subjects are required to perform. Automatic processes depending on the activation patterns of semantic representations in memory and controlled strategies adapted by individuals when attempting to maximize their recognition performance have both been implicated in contributing to the results. Lately, we have published a new model of semantic priming that addresses the majority of these findings within one conceptual framework. In our model, semantic memory is depicted as an attractor neural network in which stochastic transitions from one stored pattern to another are continually taking place due to synaptic depression mechanisms. We have shown how such transitions, in combination with a reinforcement-learning rule that adjusts their pace, resemble the classic automatic and controlled processes involved in semantic priming and account for a great number of the findings in the literature. Here, we review the core findings of our model and present new simulations that show how similar principles of parameter-adjustments could account for additional data not addressed in our previous studies, such as the relation between expectancy and inhibition in priming, target frequency and target degradation effects. Finally, we describe two human experiments that validate several key predictions of the model.
在过去的四十年中,语义启动——当目标词紧随语义相关的启动词出现时,对目标词的识别变得更加容易——一直是人类认知加工研究的核心课题。研究结果呈现出一幅复杂的画面,表明这种启动效应对独特的变量组合非常敏感,包括但不限于启动词和目标词之间的关系类型、启动-目标刺激起始时间差(SOA)、刺激列表中的相关比例(RP)以及被试需要执行的特定任务。自动过程取决于记忆中语义表示的激活模式,而个体在试图最大限度地提高识别性能时采用的控制策略,都被认为对结果有贡献。最近,我们发表了一个新的语义启动模型,该模型在一个概念框架内解决了大多数这些发现。在我们的模型中,语义记忆被描绘为一个吸引子神经网络,由于突触抑制机制,从一个存储模式到另一个存储模式的随机转换不断发生。我们展示了这种转换,结合一个调整其速度的强化学习规则,如何类似于语义启动中涉及的经典自动和控制过程,并解释了文献中的大量发现。在这里,我们回顾了我们模型的核心发现,并呈现了新的模拟结果,表明类似的参数调整原则如何解释我们之前研究中未涉及的其他数据,例如启动中的期望和抑制之间的关系、目标频率和目标降解效应。最后,我们描述了两项人类实验,验证了模型的几个关键预测。