RESUMO
Recent evidence suggests that Golgi cells in the cerebellar granular layer are densely connected to each other with massive gap junctions. Here, we propose that the massive gap junctions between the Golgi cells contribute to the representational complexity of the granular layer of the cerebellum by inducing chaotic dynamics. We construct a model of cerebellar granular layer with diffusion coupling through gap junctions between the Golgi cells, and evaluate the representational capability of the network with the reservoir computing framework. First, we show that the chaotic dynamics induced by diffusion coupling results in complex output patterns containing a wide range of frequency components. Second, the long non-recursive time series of the reservoir represents the passage of time from an external input. These properties of the reservoir enable mapping different spatial inputs into different temporal patterns.
Assuntos
Cerebelo/citologia , Cerebelo/fisiologia , Rede Nervosa/citologia , Rede Nervosa/fisiologia , Dinâmica não Linear , Animais , Córtex Cerebelar/citologia , Córtex Cerebelar/fisiologia , Células Cerebelares de Golgi/fisiologia , Junções Comunicantes/fisiologia , HumanosRESUMO
An architecture for reasoning with pattern-based if-then rules is proposed. By processing patterns as real-valued vectors and classifying similar if-then rules into clusters in long-term memory, the proposed system can store pattern-based if-then rules of propositional logic, including conjunctions, disjunctions, and negations. Moreover, it achieves some important properties for intelligent systems such as incremental learning, generalization, avoidance of duplicate results, and robustness to noise. Results of experiments demonstrate that the proposed method is effective for intelligent systems for solving various tasks autonomously in a real environment.
Assuntos
Associação , Redes Neurais de Computação , Sistemas On-Line , Resolução de Problemas/fisiologia , Aprendizagem Baseada em Problemas/métodos , Algoritmos , Simulação por Computador , Humanos , Armazenamento e Recuperação da Informação , Memória/fisiologia , Reconhecimento Automatizado de PadrãoRESUMO
Associative memory operating in a real environment must perform well in online incremental learning and be robust to noisy data because noisy associative patterns are presented sequentially in a real environment. We propose a novel associative memory that satisfies these requirements. Using the proposed method, new associative pairs that are presented sequentially can be learned accurately without forgetting previously learned patterns. The memory size of the proposed method increases adaptively with learning patterns. Therefore, it suffers neither redundancy nor insufficiency of memory size, even in an environment in which the maximum number of associative pairs to be presented is unknown before learning. Noisy inputs in real environments are classifiable into two types: noise-added original patterns and faultily presented random patterns. The proposed method deals with two types of noise. To our knowledge, no conventional associative memory addresses noise of both types. The proposed associative memory performs as a bidirectional one-to-many or many-to-one associative memory and deals not only with bipolar data, but also with real-valued data. Results demonstrate that the proposed method's features are important for application to an intelligent robot operating in a real environment. The originality of our work consists of two points: employing a growing self-organizing network for an associative memory, and discussing what features are necessary for an associative memory for an intelligent robot and proposing an associative memory that satisfies those requirements.