Patents by Inventor Michael Levit

Michael Levit 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).

  • Publication number: 20130080162
    Abstract: Query history expansion may be provided. Upon receiving a spoken query from a user, an adapted language model may be applied to convert the spoken query to text. The adapted language model may comprise a plurality of queries interpolated from the user's previous queries and queries associated with other users. The spoken query may be executed and the results of the spoken query may be provided to the user.
    Type: Application
    Filed: September 23, 2011
    Publication date: March 28, 2013
    Applicant: Microsoft Corporation
    Inventors: Shuangyu Chang, Michael Levit, Bruce Melvin Buntschuh
  • Patent number: 8260817
    Abstract: The invention relates to topic classification systems in which text intervals are represented as proposition trees. Free-text queries and candidate responses are transformed into proposition trees, and a particular candidate response can be matched to a free-text query by transforming the proposition trees of the free-text query into the proposition trees of the candidate responses. Because proposition trees are able to capture semantic information of text intervals, the topic classification system accounts for the relative importance of topic words, for paraphrases and re-wordings, and for omissions and additions. Redundancy of two text intervals can also be identified.
    Type: Grant
    Filed: January 24, 2011
    Date of Patent: September 4, 2012
    Assignee: Raytheon BBN Technologies Corp.
    Inventors: Elizabeth Megan Boschee, Michael Levit, Marjorie Ruth Freedman
  • Patent number: 8180641
    Abstract: Sequential speech recognition using two unequal automatic speech recognition (ASR) systems may be provided. The system may provide two sets of vocabulary data. A determination may be made as to whether entries in one set of vocabulary data are likely to be confused with entries in the other set of vocabulary data. If confusion is likely, a decoy entry from one set of the vocabulary data may be placed in the other set of vocabulary data to ensure more efficient and accurate speech recognition processing may take place.
    Type: Grant
    Filed: September 29, 2008
    Date of Patent: May 15, 2012
    Assignee: Microsoft Corporation
    Inventors: Michael Levit, Shuangyu Chang, Bruce Melvin Buntschuh
  • Publication number: 20120109652
    Abstract: On a computing device a speech utterance is received from a user. The speech utterance is a section of a speech dialog that includes a plurality of speech utterances. One or more features from the speech utterance are identified. Each identified feature from the speech utterance is a specific characteristic of the speech utterance. One or more features from the speech dialog are identified. Each identified feature from the speech dialog is associated with one or more events in the speech dialog. The one or more events occur prior to the speech utterance. One or more identified features from the speech utterance and one or more identified features from the speech dialog are used to calculate a confidence score for the speech utterance.
    Type: Application
    Filed: October 27, 2010
    Publication date: May 3, 2012
    Applicant: MICROSOFT CORPORATION
    Inventors: Michael Levit, Bruce Melvin Buntschuh
  • Publication number: 20110153673
    Abstract: The invention relates to topic classification systems in which text intervals are represented as proposition trees. Free-text queries and candidate responses are transformed into proposition trees, and a particular candidate response can be matched to a free-text query by transforming the proposition trees of the free-text query into the proposition trees of the candidate responses. Because proposition trees are able to capture semantic information of text intervals, the topic classification system accounts for the relative importance of topic words, for paraphrases and re-wordings, and for omissions and additions. Redundancy of two text intervals can also be identified.
    Type: Application
    Filed: January 24, 2011
    Publication date: June 23, 2011
    Applicant: RAYTHEON BBN TECHNOLOGIES CORP.
    Inventors: Elizabeth Megan Boschee, Michael Levit, Marjorie Ruth Freedman
  • Patent number: 7890539
    Abstract: The invention relates to topic classification systems in which text intervals are represented as proposition trees. Free-text queries and candidate responses are transformed into proposition trees, and a particular candidate response can be matched to a free-text query by transforming the proposition trees of the free-text query into the proposition trees of the candidate responses. Because proposition trees are able to capture semantic information of text intervals, the topic classification system accounts for the relative importance of topic words, for paraphrases and re-wordings, and for omissions and additions. Redundancy of two text intervals can also be identified.
    Type: Grant
    Filed: October 10, 2007
    Date of Patent: February 15, 2011
    Assignee: Raytheon BBN Technologies Corp.
    Inventors: Elizabeth Megan Boschee, Michael Levit, Marjorie Ruth Freedman
  • Publication number: 20100312546
    Abstract: Architecture that employs an overall grammar as a set of context-specific grammars for recognition of an input, each responsible for a specific context, such as subtask category, geographic region, etc. The grammars together cover the entire domain. Moreover, multiple recognitions can be run in parallel against the same input, where each recognition uses one or more of the context-specific grammars. The multiple intermediate recognition results from the different recognizer-grammars are reconciled by running re-recognition using a dynamically composed grammar based on the multiple recognition results and potentially other domain knowledge, or selecting the winner using a statistical classifier operating on classification features extracted from the multiple recognition results and other domain knowledge.
    Type: Application
    Filed: June 4, 2009
    Publication date: December 9, 2010
    Applicant: Microsoft Corporation
    Inventors: Shuangyu Chang, Michael Levit, Bruce Buntschuh
  • Publication number: 20100082343
    Abstract: Sequential speech recognition using two unequal automatic speech recognition (ASR) systems may be provided. The system may provide two sets of vocabulary data. A determination may be made as to whether entries in one set of vocabulary data are likely to be confused with entries in the other set of vocabulary data. If confusion is likely, a decoy entry from one set of the vocabulary data may be placed in the other set of vocabulary data to ensure more efficient and accurate speech recognition processing may take place.
    Type: Application
    Filed: September 29, 2008
    Publication date: April 1, 2010
    Applicant: Microsoft Corporation
    Inventors: Michael Levit, Shuangyu Chang, Bruce Melvin Buntschuh
  • Publication number: 20090100053
    Abstract: The invention relates to topic classification systems in which text intervals are represented as proposition trees. Free-text queries and candidate responses are transformed into proposition trees, and a particular candidate response can be matched to a free-text query by transforming the proposition trees of the free-text query into the proposition trees of the candidate responses. Because proposition trees are able to capture semantic information of text intervals, the topic classification system accounts for the relative importance of topic words, for paraphrases and re-wordings, and for omissions and additions. Redundancy of two text intervals can also be identified.
    Type: Application
    Filed: October 10, 2007
    Publication date: April 16, 2009
    Applicant: BBN Technologies, Corp.
    Inventors: Elizabeth Megan Boschee, Michael Levit, Marjorie Ruth Freedman