Department of Psychology, Carnegie Mellon University and Department of Artificial Intelligence, University of Groningen, Netherlands.
Cogn Sci. 2005 May 6;29(3):421-55. doi: 10.1207/s15516709cog0000_23.
Emerging parallel processing and increased flexibility during the acquisition of cognitive skills form a combination that is hard to reconcile with rule-based models that often produce brittle behavior. Rule-based models can exhibit these properties by adhering to 2 principles: that the model gradually learns task-specific rules from instructions and experience, and that bottom-up processing is used whenever possible. In a model of learning perfect time-sharing in dual tasks (Schumacher et al., 2001), speedup learning and bottom-up activation of instructions can explain parallel behavior. In a model of a complex dynamic task (Carnegie Mellon University Aegis Simulation Program [CMU-ASP], Anderson et al., 2004), parallel behavior is explained by the transition from serially organized instructions to rules that are activated by both top-down (goal-driven) and bottom-up (perceptually driven) factors. Parallelism lets the model opportunistically reorder instructions, leading to the gradual emergence of new task strategies.
在认知技能获取过程中出现的并行处理和灵活性的增加形成了一种难以与通常产生脆弱行为的基于规则的模型相协调的组合。基于规则的模型可以通过坚持以下两个原则来表现出这些特性:模型从指令和经验中逐渐学习特定于任务的规则,并且尽可能使用自下而上的处理。在双任务中学习完美时间共享的模型中(Schumacher 等人,2001),加速学习和指令的自下而上激活可以解释并行行为。在复杂动态任务的模型中(卡内基梅隆大学 Aegis 模拟程序 [CMU-ASP],Anderson 等人,2004),并行行为是通过从串行组织的指令过渡到由自上而下(目标驱动)和自下而上(感知驱动)因素激活的规则来解释的。并行性允许模型机会主义地重新排序指令,从而逐步出现新的任务策略。