4599693 : Probabilistic learning system


INVENTORS: Denenberg; Jeffrey N., Trumbull, CT
ASSIGNEES: ITT Corporation, New York, NY
ISSUED:July 8 , 1986 FILED: Jan. 16, 1984
SERIAL NUMBER: 571222 MAINT. STATUS:
INTL. CLASS (Ed. 4): G09C 1/00; G06K 9/62; G06F 15/18;
U.S. CLASS:364-513; 364-200; 364-900; 382-015;
FIELD OF SEARCH: 364-200 MS File,900 MS File,513,515,725,740 ; 340-146.3 MA,146.3 H,146.3 R,146.3 Q ; 382-015 ;
AGENTS: Van Der Sluys; Peter C.;

ABSTRACT:   A probabilistic learning system of the type that receives sequential input data and outputs sequences of recognized patterns. The system includes an array of interconnected probabilistic learning elements of the type that receive sequences of objects and outputs sequences of recognized states, the array of learning elements being interconnected to have a number of input learning elements and a number of output learning elements. The input data is partitioned between the input learning elements of the array so that the partitioned input data forms objects provided to the learning elements in an overlapping and redundant manner. The output sequences of recognized states from the output learning elements are collected and combined to provide a sequence of recognized patterns as an output of the probabilistic learning system. The reliability of the learning system is enhanced due to the overlapping and redundant nature in which the input objects are processed through the system and the time required to perform the system task is reduced through the use of parallel processing through the array. Each element of the array provides a signal correspoding to a rating of confidence in the recognized states and this rating of confidence is fed back to the input of the element to cause the element to learn the recognized states when the rating of confidence exceeds a predetermined threshold level. The rating of confidence is also provided to the inputs of prior elements in the array to cause the prior elements to learn their recognized states when the rating of confidence exceeds the predetermined threshold.

U.S. REFERENCES:   28 patents reference this one
Patent No. Inventor Issued Title
3103648 * Hartmanis9 /1963  
3196399 * Kamentsky7 /1965  
3267431 * Greenberg8 /1966  
3414885 * Muller12 /1968  
3440617 * Lesti4 /1969  
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3601811 Yoshino8 /1971 LEARNING MACHINE
3613084 Armstrong10 /1971 TRAINABLE DIGITAL APPARATUS
3623015 Schmitz11 /1971 STATISTICAL PATTERN RECOGNITION SYSTEM WITH CONTINUAL UPDATE OF ACCEPTANCE ZONE LIMITS
3638196 Nishiyama et al.1 /1972 LEARNING MACHINE
3646329 Yoshino et al.2 /1972 ADAPTIVE LOGIC CIRCUIT
3678461 Choate et al.7 /1972 EXPANDED SEARCH FOR TREE ALLOCATED PROCESSORS
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3701974 Russell10 /1972 LEARNING CIRCUIT
3702986 Taylor et al.11 /1972 TRAINABLE ENTROPY SYSTEM
3715730 Smith2 /1973 MULTI-CRITERIA SEARCH PROCEDURE FOR TRAINABLE PROCESSORS
3716840 Masten et al.2 /1973 MULTIMODAL SEARCH
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3950733 Cooper et al.4 /1976 Information processing system
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4286330 Isaacson8 /1981 Autonomic string-manipulation system
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4384273 Ackland et al.5 /1983 Time warp signal recognition processor for matching signal patterns
4450530 Uinas et al.5 /1984 Sensorimotor coordinator
  * some details unavailable

EXEMPLARY CLAIM(s): Show all 23 claims

    What is claimed is:
    • 19. A probabilistic learning system that receives sequential input data and outputs sequences of recognized patterns, comprising:
    • an array of interconnected probabilistic learning elements that receives sequences of objects and output sequences of recognized states, said array of learning elements being interconnected to have a number of input learning elements and a number of output learning elements the sequences of recognized states from predetermined learning elements being combined to form objects to be received by other learning elements of the array; means for receiving and partitioning the input data between the input learning elements of the array in an overlapping and redundant manner, whereby the partitioned input data become objects provided to the input learning elements; and means for collecting and combining the recognized state sequences from the output learning elements of the array and for providing a sequence of recognized patterns as an output of the probabilistic learning system, whereby the reliability of the learning system is enhanced due to the overlapping and redundant nature in which the input data is processed through the system and the time required to perform the system task is reduced through the use of parallel processing through the array.

    RELATED U.S. APPLICATIONS: none

    FOREIGN APPLICATION PRIORITY DATA: none
    FOREIGN REFERENCES: none

    OTHER REFERENCES:

    • "Artificial Intelligence", Roberts, Byte 9/81, pp. B-164-178.
    • Jackson, Jr. Introduction to Artificial Intelligence, Petrocelli/Charter New York 1974.
    • "Medicine Intelligence and Communications in Future NASA Missions", IEEE Transactions, Healy, pp. 8-15.
    • "How Artificial is Intelligence", Bennett, Jr. American Scientist, vol. 65, No. 6, Nov.-Dec. 77, pp. 694-702.
    PRIMARY/ASSISTANT EXAMINERS: Smith; Jerry; Grossman; Jon D.
    ADDED TO DATABASE: Aug. 22, 1996