发展性自主学习:人工智能、认知科学和教育技术

Pierre-Yves Oudeyer
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引用次数: 1

摘要

与儿童的自主学习能力相比,目前人工智能和机器学习的方法仍然非常有限。值得注意的不是一些孩子在某些游戏或专业中成为世界冠军,而是他们在时间、计算和精力非常有限的情况下学习许多日常技能的自主性、灵活性和效率。他们也不需要工程师对每个新任务进行干预(例如,他们不需要有人提供新任务特定的奖励功能)。我将介绍一个研究项目,重点是过去十年儿童发展和学习机制的计算建模。我将从算法模型如何帮助我们更好地理解它们如何在人类中工作,以及反过来如何为自主机器学习开辟新途径的角度出发,讨论指导大型现实世界空间探索的几种发展力量。特别地,我将讨论好奇心驱动的自主学习模型,使机器能够抽样和探索自己的目标和自己的学习策略,在没有任何外部奖励或监督的情况下自组织学习课程。我将展示这如何帮助科学家更好地理解人类发展的各个方面,比如物体操纵、工具使用和语言之间的发展过渡的出现。我还将展示如何使用真实的机器人平台来评估这些模型,从而产生高效的无监督学习方法,使机器人能够在几个小时内发现和学习高维的多种技能。我将讨论如何将这些技术与现代深度学习方法相结合。最后,我将展示这些模型和技术如何成功地应用于教育技术领域,为人类学习者提供个性化的练习序列,同时最大限度地提高学习效率和内在动机。我将以最近在小学进行的一项大规模实验来说明这一点,该实验使各个层次的孩子都能提高他们在数学学习方面的技能和动机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developmental Autonomous Learning: AI, Cognitive Sciences and Educational Technology
Current approaches to AI and machine learning are still fundamentally limited in comparison with autonomous learning capabilities of children. What is remarkable is not that some children become world champions in certain games or specialties: it is rather their autonomy, flexibility and efficiency at learning many everyday skills under strongly limited resources of time, computation and energy. And they do not need the intervention of an engineer for each new task (e.g. they do not need someone to provide a new task specific reward function). XX I will present a research program that has focused on computational modeling of child development and learning mechanisms in the last decade. I will discuss several developmental forces that guide exploration in large real world spaces, starting from the perspective of how algorithmic models can help us understand better how they work in humans, and in return how this opens new approaches to autonomous machine learning. XX In particular, I will discuss models of curiosity-driven autonomous learning, enabling machines to sample and explore their own goals and their own learning strategies, self-organizing a learning curriculum without any external reward or supervision. XX I will show how this has helped scientists understand better aspects of human development such as the emergence of developmental transitions between object manipulation, tool use and speech. I will also show how the use of real robotic platforms for evaluating these models has led to highly efficient unsupervised learning methods, enabling robots to discover and learn multiple skills in high-dimensions in a handful of hours. I will discuss how these techniques are now being integrated with modern deep learning methods. XX Finally, I will show how these models and techniques can be successfully applied in the domain of educational technologies, enabling to personalize sequences of exercises for human learners, while maximizing both learning efficiency and intrinsic motivation. I will illustrate this with a large-scale experiment recently performed in primary schools, enabling children of all levels to improve their skills and motivation in learning aspects of mathematics.
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