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Accelerating Human Visual Concept Learning and Boosting Performance via Computational Models of Perception and Cognition

机译:通过感知和认知计算模型加速人类视觉概念学习并提高性能

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摘要

Visual categorization is ubiquitous in many professions, yet training programs are typically time- and effort-intensive. This work focuses on developing methods to improve human learning and performance on challenging visual categorization tasks, e.g., bird species identification, diagnostic dermatology. As part of the general approach, we infer state-of-the-art psychological embeddings, formal models of the internal representations that individuals use to reason about a domain. Using predictive cognitive models that operate on an embedding, we evaluate different techniques for making training more efficient as well as amplifying an individual's capabilities regardless of experience. In particular, this work concentrates on the value of allowing learners to request clues, the ability to predict exemplar difficulty, and manipulating the order of training trials in order to maximize learning outcomes. Results from a category learning experiment reveal that allowing learners to request clues enables early success at no cost to later performance. Model and behavioral analysis indicate that the difficulty of an exemplar can be accurately predicted without relying on human training data or experts. Results of a category learning experiment suggest that learning outcomes can be improved by arranging the order of trials using a non-conventional scheduling policy. Collectively, the results of this work bring us closer to a world where visual category learning is no harder than it absolutely has to be.
机译:视觉分类在许多行业中普遍存在,但培训计划通常需要大量时间和精力。这项工作的重点是开发方法,以提高人类在具有挑战性的视觉分类任务(例如鸟类识别,皮肤病学诊断)上的学习和表现。作为一般方法的一部分,我们可以推断出最先进的心理嵌入,即个人用来推理领域的内部表示形式的正式模型。通过对嵌入物进行操作的预测性认知模型,我们可以评估各种技术,以使培训更加有效,并且可以扩大个人的能力,而不论其经验如何。尤其是,这项工作的重点在于允许学习者请求线索,预测示例难度的能力以及操纵训练试验的顺序以最大化学习成果的价值。类别学习实验的结果表明,允许学习者请求线索可以在不影响后期性能的前提下尽早取得成功。模型和行为分析表明,无需依赖人类训练数据或专家即可准确预测示例的难度。类别学习实验的结果表明,可以通过使用非常规的调度策略安排试验的顺序来改善学习效果。总的来说,这项工作的结果使我们更接近一个视觉类别学习并不比绝对必要的难的世界。

著录项

  • 作者

    Roads, Brett David.;

  • 作者单位

    University of Colorado at Boulder.;

  • 授予单位 University of Colorado at Boulder.;
  • 学科 Cognitive psychology.;Educational technology.;Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:39:00

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