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Comparing associative statistical and inferential reasoning accounts of human contingency learning

机译:比较人类偶然性学习的联想统计和推理推理

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摘要

For more than two decades, researchers have contrasted the relative merits of associative and statistical theories as accounts of human contingency learning. This debate, still far from resolution, has led to further refinement of models within each family of theories. More recently, a third theoretical view has joined the debate: the inferential reasoning account. The explanations of these three accounts differ critically in many aspects, such as level of analysis and their emphasis on different steps within the information-processing sequence. Also, each account has important advantages (as well as critical flaws) and emphasizes experimental evidence that poses problems to the others. Some hybrid models of human contingency learning have attempted to reconcile certain features of these accounts, thereby benefiting from some of the unique advantages of different families of accounts. A comparison of these families of accounts will help us appreciate the challenges that research on human contingency learning will face over the coming years.
机译:在过去的二十多年中,研究人员对比了关联理论和统计理论作为人类偶然性学习的相对优点。这场辩论距离解决还很远,已导致每个理论家族中模型的进一步完善。最近,第三种理论观点也加入了争论:推理推理。这三个帐户的解释在很多方面都存在重大差异,例如分析级别以及它们对信息处理序列中不同步骤的重视。此外,每个帐户都具有重要的优点(以及关键的缺陷),并强调给他人带来问题的实验证据。某些人类意外事件学习的混合模型已尝试调和这些帐户的某些功能,从而从不同帐户家族的某些独特优势中受益。对这些科目进行比较,将有助于我们认识到在未来几年中,人类意外事件学习研究将面临的挑战。

著录项

  • 期刊名称 other
  • 作者

    Oskar Pineño; Ralph R. Miller;

  • 作者单位
  • 年(卷),期 -1(60),3
  • 年度 -1
  • 页码 310–329
  • 总页数 21
  • 原文格式 PDF
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