3,374 research outputs found

    Distributed ARTMAP

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    Distributed coding at the hidden layer of a multi-layer perceptron (MLP) endows the network with memory compression and noise tolerance capabilities. However, an MLP typically requires slow off-line learning to avoid catastrophic forgetting in an open input environment. An adaptive resonance theory (ART) model is designed to guarantee stable memories even with fast on-line learning. However, ART stability typically requires winner-take-all coding, which may cause category proliferation in a noisy input environment. Distributed ARTMAP (dARTMAP) seeks to combine the computational advantages of MLP and ART systems in a real-time neural network for supervised learning. This system incorporates elements of the unsupervised dART model as well as new features, including a content-addressable memory (CAM) rule. Simulations show that dARTMAP retains fuzzy ARTMAP accuracy while significantly improving memory compression. The model's computational learning rules correspond to paradoxical cortical data.Office of Naval Research (N00014-95-1-0409, N00014-95-1-0657

    A scalable multi-core architecture with heterogeneous memory structures for Dynamic Neuromorphic Asynchronous Processors (DYNAPs)

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    Neuromorphic computing systems comprise networks of neurons that use asynchronous events for both computation and communication. This type of representation offers several advantages in terms of bandwidth and power consumption in neuromorphic electronic systems. However, managing the traffic of asynchronous events in large scale systems is a daunting task, both in terms of circuit complexity and memory requirements. Here we present a novel routing methodology that employs both hierarchical and mesh routing strategies and combines heterogeneous memory structures for minimizing both memory requirements and latency, while maximizing programming flexibility to support a wide range of event-based neural network architectures, through parameter configuration. We validated the proposed scheme in a prototype multi-core neuromorphic processor chip that employs hybrid analog/digital circuits for emulating synapse and neuron dynamics together with asynchronous digital circuits for managing the address-event traffic. We present a theoretical analysis of the proposed connectivity scheme, describe the methods and circuits used to implement such scheme, and characterize the prototype chip. Finally, we demonstrate the use of the neuromorphic processor with a convolutional neural network for the real-time classification of visual symbols being flashed to a dynamic vision sensor (DVS) at high speed.Comment: 17 pages, 14 figure

    Adaptive Resonance: An Emerging Neural Theory of Cognition

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    Adaptive resonance is a theory of cognitive information processing which has been realized as a family of neural network models. In recent years, these models have evolved to incorporate new capabilities in the cognitive, neural, computational, and technological domains. Minimal models provide a conceptual framework, for formulating questions about the nature of cognition; an architectural framework, for mapping cognitive functions to cortical regions; a semantic framework, for precisely defining terms; and a computational framework, for testing hypotheses. These systems are here exemplified by the distributed ART (dART) model, which generalizes localist ART systems to allow arbitrarily distributed code representations, while retaining basic capabilities such as stable fast learning and scalability. Since each component is placed in the context of a unified real-time system, analysis can move from the level of neural processes, including learning laws and rules of synaptic transmission, to cognitive processes, including attention and consciousness. Local design is driven by global functional constraints, with each network synthesizing a dynamic balance of opposing tendencies. The self-contained working ART and dART models can also be transferred to technology, in areas that include remote sensing, sensor fusion, and content-addressable information retrieval from large databases.Office of Naval Research and the defense Advanced Research Projects Agency (N00014-95-1-0409, N00014-1-95-0657); National Institutes of Health (20-316-4304-5

    NASA JSC neural network survey results

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    A survey of Artificial Neural Systems in support of NASA's (Johnson Space Center) Automatic Perception for Mission Planning and Flight Control Research Program was conducted. Several of the world's leading researchers contributed papers containing their most recent results on artificial neural systems. These papers were broken into categories and descriptive accounts of the results make up a large part of this report. Also included is material on sources of information on artificial neural systems such as books, technical reports, software tools, etc

    Efficient binary cutting packet classification

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    Packet classification is the process of distributing packets into ‘flows’ in an internet router. Router processes all packets which belong to predefined rule sets in similar manner& classify them to decide upon what all services packet should receive. It plays an important role in both edge and core routers to provideadvanced network service such as quality of service, firewalls and intrusion detection. These services require the ability to categorize & isolate packet traffic in different flows for proper processing. Packet classification remains a classical problem, even though lots of researcher working on the problem. Existing algorithms such asHyperCuts,boundary cutting and HiCuts have achieved an efficient performance by representing rules in geometrical method in a classifier and searching for a geometric subspace to which each inputpacket belongs. Some fixed interval-based cutting not relating to the actual space that eachrule covers is ineffective and results in a huge storage requirement. However, the memoryconsumption of these algorithms remains quite high when high throughput is required.Hence in this paper we are proposing a new efficient splitting criterion which is memory andtime efficient as compared to other mentioned techniques. Our proposed approach known as (ABC) Adaptive Binary Cuttingproducesa set of different-sized cuts at each decision step, with the goal to balance the distribution offilters and to reduce the filter duplication effect. The proposed algorithmuses stronger andmore straightforward criteria for decision treeconstruction. Experimental results will showthe effectiveness of proposed algorithm as compared to existing algorithm using differentparameters such as time & memory. In this paper, no symmetrical size cut at each decision node, with aim to make a distribution of filters balanced and also to reduce redundancy in filter

    Adaptive Resonance Theory

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