论文标题
AI以场景拟合和动态认知网络为中心
AI Centered on Scene Fitting and Dynamic Cognitive Network
论文作者
论文摘要
本文简要分析了AI主流技术的优点和问题,并提出了:为了实现更强的人工智能,必须更改端到端功能计算,并采用以场景拟合为中心的技术系统。它还讨论了名为动态认知网络模型(DC NET)的具体方案。讨论:综合领域中的知识和数据通过使用由概念化元素构建的丰富连接异质动态认知网络统一表示;二维和多层的网络结构旨在实现AI核心处理(例如组合和概括)的统一实现;本文分析了计算机系统在不同场景中的实现差异,例如开放型域,封闭域,明显的概率和非显着概率,并指出在开放型域中的实现和重要的概率场景是AI的关键,并且认知概率模型结合了双向概率,概率传递和概率传递,概率上位置,概率上位置,设计;由目标和概率驱动的全向网络匹配增长算法系统旨在实现解析,生成,推理,查询,学习等的集成;提出了认知网络优化的原理,并且认知网络学习算法(CNL)的基本框架设计,结构学习是主要方法,而参数学习是辅助方法。本文分析了直流网络模型和人类智能之间实施的逻辑相似性。
This paper briefly analyzes the advantages and problems of AI mainstream technology and puts forward: To achieve stronger Artificial Intelligence, the end-to-end function calculation must be changed and adopt the technology system centered on scene fitting. It also discusses the concrete scheme named Dynamic Cognitive Network model (DC Net). Discussions : The knowledge and data in the comprehensive domain are uniformly represented by using the rich connection heterogeneous Dynamic Cognitive Network constructed by conceptualized elements; A network structure of two dimensions and multi layers is designed to achieve unified implementation of AI core processing such as combination and generalization; This paper analyzes the implementation differences of computer systems in different scenes, such as open domain, closed domain, significant probability and non-significant probability, and points out that the implementation in open domain and significant probability scene is the key of AI, and a cognitive probability model combining bidirectional conditional probability, probability passing and superposition, probability col-lapse is designed; An omnidirectional network matching-growth algorithm system driven by target and probability is designed to realize the integration of parsing, generating, reasoning, querying, learning and so on; The principle of cognitive network optimization is proposed, and the basic framework of Cognitive Network Learning algorithm (CNL) is designed that structure learning is the primary method and parameter learning is the auxiliary. The logical similarity of implementation between DC Net model and human intelligence is analyzed in this paper.