Patents by Inventor Kentaro Torisawa
Kentaro Torisawa has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
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Publication number: 20240152565Abstract: An information processing system includes a processing result database that stores a processing result of a processing target including location information. One or more processors determine a unit area corresponding to the location information included in the processing target. The processors analyze the text through any of analysis processes including a first analysis process and a second analysis process higher in accuracy than the first analysis process. When a processing result of another processing target for the determined unit area has been already stored after obtaining a first processing result by analyzing the text through the first analysis process, the processors add the first processing result to the processing result database. When the processing result of the other processing target has not been stored, the processors obtain a second processing result by analyzing the text through the second analysis process and store the same into the processing result database.Type: ApplicationFiled: February 15, 2022Publication date: May 9, 2024Inventors: Kentaro Torisawa, Kiyonori Otake
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Patent number: 11861307Abstract: A request paraphrasing system 120 allowing a dialogue system to flexibly address to requests in various different manners of expression includes: a pre-processing unit 130 converting a user input 56 to a word vector sequence; and a neural paraphrasing model 94 trained in advance by machine learning to receive the word vector sequence as an input and paraphrasing a request represented by the word vector sequence to a request having a higher probability of obtaining an answer from a question-answering device 122 than the request before paraphrasing. As pre-processing, whether the user input 56 is a request or not may be determined and it may be paraphrased only when it is determined to be a request. Further, a classification model 98 may classify the input request to determine to which request class it belongs, and the classification may be input as one feature to neural paraphrasing model 94.Type: GrantFiled: March 5, 2019Date of Patent: January 2, 2024Assignee: National Institute of Information and Communications TechnologyInventors: Yoshihiko Asao, Ryu Iida, Canasai Kruengkrai, Noriyuki Abe, Kanako Onishi, Kentaro Torisawa, Yutaka Kidawara
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Publication number: 20230385558Abstract: A text classifier 90 for answer identification is capable of highly accurate identification of an answer candidate to a question, by effectively using background knowledge related to the question, in order to extract an answer candidate to the question, the text classifier including: a BERT (Bidirectional Encoder Representation from Transformers) receiving a question and an answer candidate as inputs; a knowledge integration transformer receiving the output of BERT as an input; a background knowledge representation generator receiving a question and an answer as inputs and generating a group of background knowledge representation vectors for the question; and a vector converter respectively converting the question and the answer candidate to embedded vectors and inputting the same to the background knowledge representation generator.Type: ApplicationFiled: October 13, 2021Publication date: November 30, 2023Inventors: Jonghoon OH, Kentaro TORISAWA, Julien KLOETZER, Ryu IIDA
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Publication number: 20220253599Abstract: A program for training a representation generator generating a representation representing an answer part included in a passage to classify whether the passage is related to an answer or not. The program causes a computer to operate as: a fake representation generator responsive to a question and a passage for outputting a fake representation representing an answer part of the passage; a real representation generator for outputting, for the question and a core answer, a real representation representing the core answer, in the same format as fake representation; a discriminator for discriminating whether fake representation and real representation are a real or fake representation; and a generative adversarial network unit training the discriminator and fake representation generator through generative adversarial network such that error determination of fake representation is maximized and error determination of real representation is minimized.Type: ApplicationFiled: July 6, 2020Publication date: August 11, 2022Inventors: Jonghoon OH, Kazuma KADOWAKI, Julien KLOETZER, Ryu IIDA, Kentaro TORISAWA
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Patent number: 11256658Abstract: A causality recognizing apparatus includes a candidate vector generating unit configured to receive a causality candidate for generating a candidate vector representing a word sequence forming the candidate; a context vector generating unit generating a context vector representing a context in which noun-phrases of cause and effect parts of the causality candidate appear; a binary pattern vector generating unit, an answer vector generating unit and a related passage vector generating unit, generating a word vector representing background knowledge for determining whether or not there is causality between the noun-phrase included in the cause part and the noun-phrase included in the effect part; and a multicolumn convolutional neural network learned in advance to receive these word vectors and to determine whether or not the causality candidate has causality.Type: GrantFiled: September 28, 2017Date of Patent: February 22, 2022Assignee: NATIONAL INSTITUTE OF INFORMATION AND COMMUNICATIONS TECHNOLOGYInventors: Canasai Kruengkrai, Chikara Hashimoto, Kentaro Torisawa, Julien Kloetzer, Jonghoon Oh, Masahiro Tanaka
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Patent number: 11176328Abstract: A question answering device includes: a general word vector converter converting a question and an answer to semantic vectors in accordance with general context; a general sentence level CNN 214, in response to similarities of semantic vectors between words in question and answer and to strength of causality between the words, for weighting each semantic vector to calculate sentence level representations of the question and the answer; a general passage level CNN 218, in response to similarity between sentence level representations of question and answer, and to strength of relation of vectors in the sentence level representations viewed from causality, for weighting the sentence level representation to calculate a passage level representation for the question and answer passage; and a classifier determining whether or not an answer is a correct answer, based on the similarities between outputs from CNNs 214 and 218.Type: GrantFiled: June 14, 2018Date of Patent: November 16, 2021Assignee: National Institute of Information and Communications TechnologyInventors: Jonghoon Oh, Kentaro Torisawa, Canasai Kruengkrai, Ryu Iida, Julien Kloetzer
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Publication number: 20210326675Abstract: A memory for a question-answering device that reduces influence of noise on answer generation and is capable of generating highly accurate answers includes: a memory configured to normalize vector expressions of answers included in a set of answers extracted from a prescribed background knowledge source for each of a plurality of mutually different questions and to store the results as normalized vectors; and a key-value memory access unit responsive to application of a question vector derived from a question for accessing the memory and for updating the question vector by using a degree of relatedness between the question vector and the plurality of questions and using the normalized vectors corresponding to respective ones of the plurality of questions.Type: ApplicationFiled: June 18, 2019Publication date: October 21, 2021Inventors: Jonghoon OH, Kentaro TORISAWA, Canasai KRUENGKRAI, Julien KLOETZER, Ryu IIDA, Ryo ISHIDA, Yoshihiko ASAO
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Publication number: 20210286948Abstract: A causality recognizing apparatus includes a candidate vector generating unit configured to receive a causality candidate for generating a candidate vector representing a word sequence forming the candidate; a context vector generating unit generating a context vector representing a context in which noun-phrases of cause and effect parts of the causality candidate appear; a binary pattern vector generating unit, an answer vector generating unit and a related passage vector generating unit, generating a word vector representing background knowledge for determining whether or not there is causality between the noun-phrase included in the cause part and the noun-phrase included in the effect part; and a multicolumn convolutional neural network learned in advance to receive these word vectors and to determine whether or not the causality candidate has causality.Type: ApplicationFiled: September 28, 2017Publication date: September 16, 2021Inventors: Canasai KRUENGKRAI, Chikara HASHIMOTO, Kentaro TORISAWA, Julien KLOETZER, Jonghoon OH, Masahiro TANAKA
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Patent number: 11113335Abstract: A dialogue system includes a response utterance selecting unit generating a response utterance original sentence to an input utterance; an input utterance emotion estimating unit estimating emotion of the input utterance by calculating input utterance emotion scores indicating degree of matching between the emotion represented by the input utterance and a plurality of emotions; and a response utterance modifying unit for calculating response utterance emotion scores of a response utterance original sentence as emotion scores for each of the plurality of emotions, modifying the response utterance original sentence by a method of modification determined by the values of input utterance emotion score and the response utterance emotion score, and thereby generating and outputting a response utterance.Type: GrantFiled: March 15, 2018Date of Patent: September 7, 2021Assignee: National Institute of Information and Communications TechnologyInventors: Noriyuki Abe, Kanako Onishi, Kentaro Torisawa, Canasai Kruengkrai, Yutaka Kidawara
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Patent number: 11106714Abstract: A summary generating apparatus includes a text storage device storing text with information indicating a portion to be focused on; word vector converters vectorizing each word of the text and adding an element indicating whether the word is focused on or not to the vector and thereby converting the text to a word vector sequence; an LSTM implemented by a neural network performing sequence-to-sequence type conversion, pre-trained by machine learning to output, in response to each of the word vectors of the word vector sequence input in a prescribed order, a summary of the text consisting of the words represented by the word sequence; and input units inputting each of the word vectors of the word vector sequence in the prescribed order to the neural network.Type: GrantFiled: May 7, 2018Date of Patent: August 31, 2021Assignee: National Institute of Information and Communications TechnologyInventors: Ryu Iida, Kentaro Torisawa, Jonghoon Oh, Canasai Kruengkrai, Yoshihiko Asao, Noriyuki Abe, Junta Mizuno, Julien Kloetzer
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Patent number: 10963646Abstract: A scenario passage pair recognizer includes: a text passage searching unit searching a set of text passages each including no more than a certain number of sentences of a document, and within which all noun phrases included in a scenario candidate co-occur; a feature extracting unit extracting a feature from each combination of the scenario candidate and each searched support passage; a classifier outputting a score indicating reliability of the scenario candidate based on the support passage as a source of the feature; and a score accumulating unit and a maximum value selecting unit, accumulating the scores output from the classifier and selecting the maximum value as the reliability of the scenario candidate. The scenario classifier determines plausibility of the scenario candidate as a causality based on the feature including the score output from the scenario passage pair recognizer.Type: GrantFiled: September 25, 2017Date of Patent: March 30, 2021Assignee: National Institute of Information and Communications TechnologyInventors: Kazuaki Inada, Chikara Hashimoto, Kentaro Torisawa
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Patent number: 10936664Abstract: A dialogue system includes: a question generating unit receiving an input sentence from a user and generating a question using an expression included in the input sentence, by using a dependency relation; an answer obtaining unit inputting the question generated by the question generating unit to a question-answering system and obtaining an answer to the question from question-answering system; and an utterance generating unit for generating an output sentence to the input sentence, based on the answer obtained by the answer obtaining unit.Type: GrantFiled: July 26, 2017Date of Patent: March 2, 2021Assignee: National Institute of Information and Communications TechnologyInventors: Noriyuki Abe, Kanako Onishi, Kentaro Torisawa, Canasai Kruengkrai, Jonghoon Oh, Ryu Iida, Yutaka Kidawara
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Publication number: 20210034817Abstract: A request paraphrasing system 120 allowing a dialogue system to flexibly address to requests in various different manners of expression includes: a pre-processing unit 130 converting a user input 56 to a word vector sequence; and a neural paraphrasing model 94 trained in advance by machine learning to receive the word vector sequence as an input and paraphrasing a request represented by the word vector sequence to a request having a higher probability of obtaining an answer from a question-answering device 122 than the request before paraphrasing. As pre-processing, whether the user input 56 is a request or not may be determined and it may be paraphrased only when it is determined to be a request. Further, a classification model 98 may classify the input request to determine to which request class it belongs, and the classification may be input as one feature to neural paraphrasing model 94.Type: ApplicationFiled: March 5, 2019Publication date: February 4, 2021Inventors: Yoshihiko ASAO, Ryu IIDA, Canasai KRUENGKRAI, Noriyuki ABE, Kanako ONISHI, Kentaro TORISAWA, Yutaka KIDAWARA
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Patent number: 10803103Abstract: [Object] To provide a system for automatically and reliably collecting information belonging to a given category, and matching the information appropriately in a timely manner. [Solution] A text classifying device 30 analyzes dependency of collected texts by a morpheme analyzing unit 52 and a dependency analyzing unit 54. A problem report collecting unit 64 specifies a core consisting of noun+predicate in a text based on dependency relation of the text, and using a combination of noun classification (trouble/non-trouble) and predicate classification (excitatory/inhibitory), classifies the text to a problem report or the rest, by a method referred to as core-based matrix. Support information collecting device 66 and request message collecting device 68 collect support information and request messages in the similar manner.Type: GrantFiled: May 15, 2014Date of Patent: October 13, 2020Assignee: National Institute of Information and Communications TechnologyInventors: Motoki Sano, Istvan Varga, Kentaro Torisawa, Chikara Hashimoto, Kiyonori Ootake, Takao Kawai, Jonghoon Oh, Stijn De Saeger
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Patent number: 10755178Abstract: A credibility determining system enabling highly accurate credibility determination of given information includes causal relation knowledge DB 90 and search scope constraint DB 88. Causal relation knowledge each includes a combination of cause and result parts, and time and position constraints associated with the causal relation.Type: GrantFiled: March 1, 2017Date of Patent: August 25, 2020Assignee: National Institute of Information and Communications TechnologyInventors: Junta Mizuno, Kentaro Torisawa, Kiyonori Ootake, Chikara Hashimoto
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Publication number: 20200233908Abstract: A dialogue system includes a response utterance selecting unit generating a response utterance original sentence to an input utterance; an input utterance emotion estimating unit estimating emotion of the input utterance by calculating input utterance emotion scores indicating degree of matching between the emotion represented by the input utterance and a plurality of emotions; and a response utterance modifying unit for calculating response utterance emotion scores of a response utterance original sentence as emotion scores for each of the plurality of emotions, modifying the response utterance original sentence by a method of modification determined by the values of input utterance emotion score and the response utterance emotion score, and thereby generating and outputting a response utterance.Type: ApplicationFiled: March 15, 2018Publication date: July 23, 2020Inventors: Noriyuki ABE, Kanako ONISHI, Kentaro TORISAWA, Canasai KRUENGKRAI, Yutaka KIDAWARA
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Publication number: 20200202233Abstract: [Object] An object is to provide a future scenario generating device capable of generating a huge number of appropriate future scenarios. [Solution] A future scenario generating device 272 includes: phrase pair DB 92 storing a large number of causality phrase pairs; a causality network building device 290 building a causality network by linking, of the phrases stored in causality phrase pair DB 92, phrases connectable as causality, using as a start point a phrase forming a main part of a question received by a question input unit 280; a community detecting device 294 detecting a community in the causality network; and a future scenario generating unit 298 generating a future scenario by linking phrases connectable as causality and belonging to the same community as the phrase as the start point until a predetermined end condition is satisfied.Type: ApplicationFiled: July 29, 2016Publication date: June 25, 2020Inventors: Chikara HASHIMOTO, Kentaro TORISAWA, Julien KLOETZER, Jonghoon OH, Masahiro TANAKA, Wushouer MAIRIDAN
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Publication number: 20200183983Abstract: A dialogue system includes: a question generating unit receiving an input sentence from a user and generating a question using an expression included in the input sentence, by using a dependency relation; an answer obtaining unit inputting the question generated by the question generating unit to a question-answering system and obtaining an answer to the question from question-answering system; and an utterance generating unit for generating an output sentence to the input sentence, based on the answer obtained by the answer obtaining unit.Type: ApplicationFiled: July 26, 2017Publication date: June 11, 2020Inventors: Noriyuki ABE, Kanako ONISHI, Kentaro TORISAWA, Canasai KRUENGKRAI, Jonghoon OH, Ryu IIDA, Yutaka KIDAWARA
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Publication number: 20200159755Abstract: A summary generating apparatus includes; a text storage device storing text with information indicating a portion to be focused on; word vector converters vectorizing each word of the text and adding an element indicating whether the word is focused on or not to the vector and thereby converting the text to a word vector sequence; an LSTM implemented by a neural network performing sequence-to-sequence type conversion, pre-trained by machine learning to output, in response to each of the word vectors of the word vector sequence input in a prescribed order, a summary of the text consisting of the words represented by the word sequence; and input units inputting each of the word vectors of the word vector sequence in the prescribed order to the neural network.Type: ApplicationFiled: May 7, 2018Publication date: May 21, 2020Inventors: Ryu IIDA, Kentaro TORISAWA, Jonghoon OH, Canasai KRUENGKRAI, Yoshihiko ASAO, Noriyuki ABE, Junta MIZUNO, Julien KLOETZER
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Publication number: 20200134263Abstract: A question answering device includes: a general word vector converter converting a question and an answer to semantic vectors in accordance with general context; a general sentence level CNN 214, in response to similarities of semantic vectors between words in question and answer and to strength of causality between the words, for weighting each semantic vector to calculate sentence level representations of the question and the answer; a general passage level CNN 218, in response to similarity between sentence level representations of question and answer, and to strength of relation of vectors in the sentence level representations viewed from causality, for weighting the sentence level representation to calculate a passage level representation for the question and answer passage; and a classifier determining whether or not an answer is a correct answer, based on the similarities between outputs from CNNs 214 and 218.Type: ApplicationFiled: June 14, 2018Publication date: April 30, 2020Inventors: Jonghoon OH, Kentaro TORISAWA, Canasai KRUENGKRAI, Ryu IIDA, Julien KLOETZER