Mixing Binary and Continuous Connection Schemes for Knowledge Access
نویسندگان
چکیده
We present BACAS. a Binary and Continuous Activation System which is a parallel process contentaddressable memory model. BACAS is designed for the representation and retrieval of ‘knowledge of the world’ for automatic natural language understanding. In its present form, BACAS is a two-layered system with 10 K-structures (like scripts) in the binary output macrolayer represented by 46 Threshold Knowledge Units and 184 processing elements (like action events) in the continuous activation micro-layer. We discuss the problems of combining two types of connection system and describe a simulation in which the system moves from one pattern to the next in response to external input. A new tool for connection systems, the pulse-out, is introduced. This is a device which replaces the Boltzmann Machine in creating energy leaps. The pulsse-out also has the advantage, in the current system, of setting the state of the system a short Hamming distance from an appropriate pattern.
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