Patents by Inventor Naoyuki Tokuda

Naoyuki Tokuda 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).

  • Patent number: 7509296
    Abstract: A learning system uses the concept of template automaton. “Various expected examples of learners” consisting of “correct” answers and “incorrect” answers are collected and a representative NLP technique such as HCS (heaviest common character string) or LCS (longest common character string) algorithm is used as an effective error diagnosis engine in the language learning system. These examples embedded in the template are used for diagnostic analysis of the answers of the learners. This diagnosis is performed by selecting a path of the highest similarity with the input sentence of the learner among a plenty of candidate paths. Thus, it is possible to automatize and simplify the time-requiring authoring task used in the language-oriented intelligent learning system.
    Type: Grant
    Filed: March 22, 2004
    Date of Patent: March 24, 2009
    Assignee: Sunflare Co., Ltd.
    Inventors: Naoyuki Tokuda, Liang Chen
  • Patent number: 7124073
    Abstract: A new, more efficient memory translation algorithm facilitating the acquisition of a most appropriate translation in a target language from among those of nearly narrowed-down candidates of translation by separately applying the so-called dimension reducing functions of a template automaton and the LSI (latent semantic index) technique. Both the template automaton and the LSI principle play an important role in implementing an efficient process of narrowing down an efficient solution space from among the many example sentences of the databases in a target language by exploiting their respective unique search space reduction function. Once developed into a fully operational system, an expert editor rather than an expert translator can tune up the translation memory system, markedly widening the range of available experts who can utilize the system.
    Type: Grant
    Filed: February 12, 2002
    Date of Patent: October 17, 2006
    Assignee: SunFlare Co., Ltd
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20060154218
    Abstract: A learning system uses the concept of template automaton. “Various expected examples of learners” consisting of “correct” answers and “incorrect” answers are collected and a representative NLP technique such as HCS (heaviest common character string) or LCS (longest common character string) algorithm is used as an effective error diagnosis engine in the language learning system. These examples embedded in the template are used for diagnostic analysis of the answers of the learners. This diagnosis is performed by selecting a path of the highest similarity with the input sentence of the learner among a plenty of candidate paths. Thus, it is possible to automatize and simplify the time-requiring authoring task used in the language-oriented intelligent learning system.
    Type: Application
    Filed: March 22, 2004
    Publication date: July 13, 2006
    Inventors: Naoyuki Tokuda, Liang Chen
  • Patent number: 7024400
    Abstract: A computerized method for automatic document classification based on a combined use of the projection and the distance of the differential document vectors to the differential latent semantics index (DLSI) spaces. The method includes the setting up of a DLSI space-based classifier to be stored in computer storage and the use of such classifier by a computer to evaluate the possibility of a document belonging to a given cluster using a posteriori probability function and to classify the document in the cluster. The classifier is effective in operating on very large numbers of documents such as with document retrieval systems over a distributed computer network.
    Type: Grant
    Filed: May 8, 2001
    Date of Patent: April 4, 2006
    Assignee: SunFlare Co., Ltd.
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Patent number: 7013262
    Abstract: An accurate grammar analyzer based on a so-called POST (part-of-speech tagged) parser and a learners' model for use in automated language learning applications such as the template-based ICALL (intelligent computer assisted language learning) system.
    Type: Grant
    Filed: February 12, 2002
    Date of Patent: March 14, 2006
    Assignee: SunFlare Co., Ltd
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Patent number: 6988063
    Abstract: An accurate grammar analyzer that works effectively even with error-ridden sentences input by learners, based on a context-free probabilistic statistical POST (part-of-speech tagged) parser, for a template-automation-based computer-assisted language learning system. For any keyed-in sentence, the parser finds a closest correct sentence to the keyed-in sentence from among the embedded template paths exploiting a highest similarity value, and generates a grammar tree for the correct sentence where some ambiguous words are preassigned by expert language teachers. The system marks the errors under the leaves of the grammar tree by identifying the differences between the keyed-in sentence and the grammar tree of the correct sentence as errors committed by learners. By identifying most frequently recurring grammatical errors of each student, the system sets up a learner's model, providing a unique level of contingent remediation most appropriate to each learner involved.
    Type: Grant
    Filed: February 12, 2002
    Date of Patent: January 17, 2006
    Assignee: SunFlare Co., Ltd.
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Patent number: 6804637
    Abstract: To retrieve an optimum template pattern in response to an input sentence, a set of templates is arranged in a plurality of template blocks containing an arbitrary number of sentence components, including grammatically correct and/or incorrect components. A score is assigned to every word in the set of templates according to its importance. The candidate template patterns and the input sentence are retrieved, the scores of the matched words are calculated, and the total of the scores of the entire paths are calculated. Optimum level comparison values are then calculated using the score of the matching words as the numerator and the total score as the denominator. The candidate template pattern having the largest optimum level comparison value among optimum level comparison values that provide the largest numerator, is selected as the optimum template pattern. The input sentence is then corrected using this optimum template pattern.
    Type: Grant
    Filed: June 20, 2000
    Date of Patent: October 12, 2004
    Assignee: Sunflare Co., Ltd.
    Inventors: Naoyuki Tokuda, Hiroyuki Sasai
  • Patent number: 6735581
    Abstract: A method of automatically generating a multi-variable fuzzy inference system using a Fourier series expansion. Sample sets are decomposed into a cluster of sample sets associated with given input variables. Fuzzy rules and membership functions are computed individually for each variable by solving a single input multiple outputs fuzzy system extracted from the set cluster. The resulting fuzzy rules and membership functions are composed and integrated back into the fuzzy system appropriate for the original sample set with a minimal computational cost. In addition, an overall system error can be related to errors at each stage of decomposition and composition, enabling error bounds or accuracy thresholds for each stage to be specified and ensuring the final precision of the resulting fuzzy system on the original sample set.
    Type: Grant
    Filed: May 8, 2001
    Date of Patent: May 11, 2004
    Assignee: SunFlare Co., Inc.
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Patent number: 6654740
    Abstract: A computer-based information search and retrieval system and method for retrieving textual digital objects that makes full use of the projections of the documents onto both the reduced document space characterized by the singular value decomposition-based latent semantic structure and its orthogonal space. The resulting system and method has increased robustness, improving the instability of the traditional keyword search engine due to synonymy and/or polysemy of a natural language, and therefore is particularly suitable for web document searching over a distributed computer network such as the Internet.
    Type: Grant
    Filed: May 8, 2001
    Date of Patent: November 25, 2003
    Assignee: SunFlare Co., Ltd.
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20030217020
    Abstract: A method of automatically generating a multi-variable fuzzy inference system using a Fourier series expansion. Sample sets are decomposed into a cluster of sample sets associated with given input variables. Fuzzy rules and membership functions are computed individually for each variable by solving a single input multiple outputs fuzzy system extracted from the set cluster. The resulting fuzzy rules and membership functions are composed and integrated back into the fuzzy system appropriate for the original sample set with a minimal computational cost. In addition, an overall system error can be related to errors at each stage of decomposition and composition, enabling error bounds or accuracy thresholds for each stage to be specified and ensuring the final precision of the resulting fuzzy system on the original sample set.
    Type: Application
    Filed: May 8, 2001
    Publication date: November 20, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20030195740
    Abstract: To allow the precision of correction to be increased in such an application as correcting an input sentence by using a template pattern for model sentence.
    Type: Application
    Filed: June 5, 2003
    Publication date: October 16, 2003
    Applicant: SUNFLARE CO., LTD.
    Inventors: Naoyuki Tokuda, Hiroyuki Sasai
  • Publication number: 20030154066
    Abstract: An accurate grammar analyzer based on a so-called POST (part-of-speech tagged) parser and a learners' model for use in automated language learning applications such as the template-based ICALL (intelligent computer assisted language learning) system.
    Type: Application
    Filed: February 12, 2002
    Publication date: August 14, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20030154068
    Abstract: A new, more efficient memory translation algorithm facilitating the acquisition of a most appropriate translation in a target language from among those of nearly narrowed-down candidates of translation by separately applying the so-called dimension reducing functions of a template automaton and the LSI (latent semantic index) technique. Both the template automaton and the LSI principle play an important role in implementing an efficient process of narrowing down an efficient solution space from among the many example sentences of the databases in a target language by exploiting their respective unique search space reduction function. Once developed into a fully operational system, an expert editor rather than an expert translator can tune up the translation memory system, markedly widening the range of available experts who can utilize the system.
    Type: Application
    Filed: February 12, 2002
    Publication date: August 14, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20030154070
    Abstract: An accurate grammar analyzer based on a so-called POST (part-of-speech tagged) parser and a learners' model for use in automated language learning applications such as the template-based ICALL (intelligent computer assisted language learning) system.
    Type: Application
    Filed: February 12, 2002
    Publication date: August 14, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Patent number: 6598019
    Abstract: To improve the precision in correction of an input sentence by using a template pattern for model sentence. A plurality of template patterns for the model sentence are provided beforehand. Each of the template patterns is regarded as a plurality of templates of words/phrases based on expertise of language teachers with scores assigned to the words according to their importance. The scores and subsequently the input sentence are read and analyzed in comparison with each of the template patterns and the total of scores of matching words is calculated. A template pattern having the highest total score is selected as an optimum template pattern and the input sentence is corrected using the optimum template pattern. This method improves the likelihood that a template pattern containing a larger number of important words is selected as the optimum template pattern.
    Type: Grant
    Filed: June 20, 2000
    Date of Patent: July 22, 2003
    Assignee: Sunflare Co., Ltd.
    Inventors: Naoyuki Tokuda, Hiroyuki Sasai
  • Publication number: 20030050921
    Abstract: A computer-based information search and retrieval system and method for retrieving textual digital objects that makes full use of the projections of the documents onto both the reduced document space characterized by the singular value decomposition-based latent semantic structure and its orthogonal space. The resulting system and method has increased robustness, improving the instability of the traditional keyword search engine due to synonymy and/or polysemy of a natural language, and therefore is particularly suitable for web document searching over a distributed computer network such as the Internet.
    Type: Application
    Filed: May 8, 2001
    Publication date: March 13, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai
  • Publication number: 20030037073
    Abstract: A method for automatic document classification based on a combined use of the projection and the distance of the differential document vectors to the differential latent semantics index (DLSI) spaces. The method includes the setting up of a DLSI space-based classifier and the use of such classifier to evaluate the possibility of a document belonging to a given cluster using a posteriori probability function.
    Type: Application
    Filed: May 8, 2001
    Publication date: February 20, 2003
    Inventors: Naoyuki Tokuda, Liang Chen, Hiroyuki Sasai