论文标题
早期单词学习的计算模型从婴儿的角度学习
A Computational Model of Early Word Learning from the Infant's Point of View
论文作者
论文摘要
人类婴儿具有从固有模棱两可的经历中学习对象名称和视觉对象之间的关联的非凡能力。认知科学和发育心理学领域的研究人员建立了正式的模型来实施原则学习算法,然后使用预先选择和预先清洗的数据集测试模型的能力,以在输入数据中找到统计规律性。与以前的建模方法相反,本研究使用了与父母的自然玩具玩耍期间从婴儿学习者那里收集的以自我为中心的视频和凝视数据。这使我们能够从学习者自己的角度的角度捕捉学习环境。然后,我们使用卷积神经网络(CNN)模型从婴儿的角度来处理感官数据,并从头开始学习名称对象关联。作为模拟婴儿单词学习的第一个模型,本研究提供了原理证明,即使用婴儿学习者感知到的实际视觉数据可以解决早期单词学习的问题。此外,我们进行了模拟实验,以系统地确定婴儿感觉体验的视觉,感知和注意力特性如何影响单词学习。
Human infants have the remarkable ability to learn the associations between object names and visual objects from inherently ambiguous experiences. Researchers in cognitive science and developmental psychology have built formal models that implement in-principle learning algorithms, and then used pre-selected and pre-cleaned datasets to test the abilities of the models to find statistical regularities in the input data. In contrast to previous modeling approaches, the present study used egocentric video and gaze data collected from infant learners during natural toy play with their parents. This allowed us to capture the learning environment from the perspective of the learner's own point of view. We then used a Convolutional Neural Network (CNN) model to process sensory data from the infant's point of view and learn name-object associations from scratch. As the first model that takes raw egocentric video to simulate infant word learning, the present study provides a proof of principle that the problem of early word learning can be solved, using actual visual data perceived by infant learners. Moreover, we conducted simulation experiments to systematically determine how visual, perceptual, and attentional properties of infants' sensory experiences may affect word learning.