发明名称 Learning machine synapse processor system apparatus
摘要 A Neural synapse processor apparatus having a neuron architecture for the synapse processing elements of the apparatus. The apparatus which we prefer will have a N neuron structure having synapse processing units that contain instruction and data storage units, receive instructions and data, and execute instructions. The N neuron structure should contain communicating adder trees, neuron activation function units, and an arrangement for communicating both instructions, data, and the outputs of neuron activation function units back to the input synapse processing units by means of the communicating adder trees. The apparatus can be structured as a bit-serial or word parallel system. The preferred structure contains N2 synapse processing units, each associated with a connection weight in the N neural network to be emulated, placed in the form of a N by N matrix that has been folded along the diagonal and made up of diagonal cells and general cells. Diagonal cells, each utilizing a single synapse processing unit, are associated with the diagonal connection weights of the folded N by N connection weight matrix and general cells, each of which has two synapse processing units merged together, and which are associated with the symmetric connection weights of the folded N by N connection weight matrix. The back-propagation learning algorithm is first discussed followed by a presentation of the learning machine synapse processor architecture. An example implementation of the back-propagation learning algorithm is then presented. This is followed by a Boltzmann like machine example and data parallel examples mapped onto the architecture.
申请公布号 US5517596(A) 申请公布日期 1996.05.14
申请号 US19930161839 申请日期 1993.12.01
申请人 INTERNATIONAL BUSINESS MACHINES CORPORATION 发明人 PECHANEK, GERALD G.;VASSILIADIS, STAMATIS;DELGADO-FRIAS, JOSE G.
分类号 G06F15/18;(IPC1-7):G06F15/18 主分类号 G06F15/18
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