模仿婴儿学习的生物学启发自组织计算模型

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-05-15 DOI:10.3390/make5020030
Karthik Santhanaraj, Dinakaran Devaraj, Ramya Mm, J. Dhanraj, K. Ramanathan
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引用次数: 0

摘要

最近的技术进步促进了人与机器人在工作和居住环境中的共存。辅助机器人必须表现出人性化的行为和持续的关怀,才能成为人类栖息地不可或缺的一部分。此外,机器人需要一个自适应的无监督学习模型来探索不熟悉的环境并无缝协作。本文介绍了基于增长层次自组织地图(GHSOM)的辅助机器人计算模型的变体,该模型从无监督探索学习中构建知识。传统的自组织映射(SOM)算法存在神经元结构有限、参数自定义、非分层自适应等缺点。所提出的模型克服了这些限制,并动态生长形成问题依赖的层次特征簇,从而允许联想学习和符号基础。婴儿可以通过探索和经验从周围环境中学习,在学习过程中发展新的神经元连接。他们还可以运用他们的先验知识来解决不熟悉的问题。由于具有类似婴儿的紧急行为,所提出的模型可以在不修改的情况下处理不同的问题,产生输入向量中不存在的新模式,并允许交互式结果可视化。将所提出的模型应用于颜色、手写体数字聚类、手指识别和图像分类等问题,以评估其自适应性和婴儿式的知识构建。结果表明,所提模型是辅助机器人优选的广义模型。
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Biologically Inspired Self-Organizing Computational Model to Mimic Infant Learning
Recent technological advancements have fostered human–robot coexistence in work and residential environments. The assistive robot must exhibit humane behavior and consistent care to become an integral part of the human habitat. Furthermore, the robot requires an adaptive unsupervised learning model to explore unfamiliar conditions and collaborate seamlessly. This paper introduces variants of the growing hierarchical self-organizing map (GHSOM)-based computational models for assistive robots, which constructs knowledge from unsupervised exploration-based learning. Traditional self-organizing map (SOM) algorithms have shortcomings, including finite neuron structure, user-defined parameters, and non-hierarchical adaptive architecture. The proposed models overcome these limitations and dynamically grow to form problem-dependent hierarchical feature clusters, thereby allowing associative learning and symbol grounding. Infants can learn from their surroundings through exploration and experience, developing new neuronal connections as they learn. They can also apply their prior knowledge to solve unfamiliar problems. With infant-like emergent behavior, the presented models can operate on different problems without modifications, producing new patterns not present in the input vectors and allowing interactive result visualization. The proposed models are applied to the color, handwritten digits clustering, finger identification, and image classification problems to evaluate their adaptiveness and infant-like knowledge building. The results show that the proposed models are the preferred generalized models for assistive robots.
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CiteScore
6.30
自引率
0.00%
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审稿时长
7 weeks
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