A Novel Learning and Response Generating Agent-based Model for Symbolic - Numeric Knowledge Modeling and Combination

A. Doboli, S. Doboli
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引用次数: 6

Abstract

Many modern applications require both modeling and generative capabilities, so that they can produce novel outcomes that address requirements beyond the solutions used in model training. Current AI approaches arguably emphasize modeling but pay much less attention to generative capabilities. This paper presents a new learning and response generating (LRG) agent-based model, in which interacting agents continuously learn symbolic - numeric knowledge and create new outcomes (responses) using a set of five ways to combine concepts. Each way has both fast, reactive and a slow, planned versions. Experiments present the characteristics of an agent's modeling and generating capabilities.
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一种新的基于学习和响应生成代理的符号-数字知识建模与组合模型
许多现代应用程序都需要建模和生成能力,因此它们可以产生新的结果,以满足模型训练中使用的解决方案之外的需求。目前的人工智能方法强调建模,但很少关注生成能力。本文提出了一种新的基于智能体的学习和响应生成(LRG)模型,在该模型中,相互作用的智能体通过五种组合概念的方式不断学习符号-数字知识并产生新的结果(响应)。每种方法都有快速的、反应性的和缓慢的、有计划的版本。实验展示了智能体建模和生成能力的特点。
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