Patents by Inventor MURAT AKBACAK
MURAT AKBACAK 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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Patent number: 10446143Abstract: Systems and processes for identifying of a voice input providing one or more user credentials are provided. In one example process, a voice input can be received. A first character, a phrase identifying a second character, and a word can be identified based on the voice input. In response to the identification, the first character, the second character, and the word can be converted to text. The text can be caused to display, with a display, in a sequence corresponding to an order of the first character, the second character, and the word in the voice input.Type: GrantFiled: September 16, 2016Date of Patent: October 15, 2019Assignee: Apple Inc.Inventors: Murat Akbacak, Bryan Hansen, Gunnar Evermann
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Patent number: 9997157Abstract: Systems and methods are provided for improving language models for speech recognition by personalizing knowledge sources utilized by the language models to specific users or user-population characteristics. A knowledge source, such as a knowledge graph, is personalized for a particular user by mapping entities or user actions from usage history for the user, such as query logs, to the knowledge source. The personalized knowledge source may be used to build a personal language model by training a language model with queries corresponding to entities or entity pairs that appear in usage history. In some embodiments, a personalized knowledge source for a specific user can be extended based on personalized knowledge sources of similar users.Type: GrantFiled: May 16, 2014Date of Patent: June 12, 2018Assignee: Microsoft Technology Licensing, LLCInventors: Murat Akbacak, Dilek Z. Hakkani-Tur, Gokhan Tur, Larry P. Heck, Benoit Dumoulin
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Publication number: 20170263249Abstract: Systems and processes for identifying of a voice input providing one or more user credentials are provided. In one example process, a voice input can be received. A first character, a phrase identifying a second character, and a word can be identified based on the voice input. In response to the identification, the first character, the second character, and the word can be converted to text. The text can be caused to display, with a display, in a sequence corresponding to an order of the first character, the second character, and the word in the voice input.Type: ApplicationFiled: September 16, 2016Publication date: September 14, 2017Inventors: Murat AKBACAK, Bryan HANSEN, Gunnar EVERMANN
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Patent number: 9679558Abstract: Systems and methods are provided for training language models using in-domain-like data collected automatically from one or more data sources. The data sources (such as text data or user-interactional data) are mined for specific types of data, including data related to style, content, and probability of relevance, which are then used for language model training. In one embodiment, a language model is trained from features extracted from a knowledge graph modified into a probabilistic graph, where entity popularities are represented and the popularity information is obtained from data sources related to the knowledge. Embodiments of language models trained from this data are particularly suitable for domain-specific conversational understanding tasks where natural language is used, such as user interaction with a game console or a personal assistant application on personal device.Type: GrantFiled: May 15, 2014Date of Patent: June 13, 2017Assignee: Microsoft Technology Licensing, LLCInventors: Murat Akbacak, Dilek Z. Hakkani-Tur, Gokhan Tur, Larry P. Heck, Benoit Dumoulin
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Patent number: 9576570Abstract: The present invention relates to a method and apparatus for adding new vocabulary to interactive translation and dialog systems. In one embodiment, a method for adding a new word to a vocabulary of an interactive dialog includes receiving an input signal that includes at least one word not currently in the vocabulary, inserting the word into a dynamic component of a search graph associated with the vocabulary, and compiling the dynamic component independently of a permanent component of the search graph to produce a new sub-grammar, where the permanent component comprises a plurality of words that are permanently part of the search graph.Type: GrantFiled: July 30, 2010Date of Patent: February 21, 2017Assignee: SRI INTERNATIONALInventors: Kristin Precoda, Horacio Franco, Jing Zheng, Michael Frandsen, Victor Abrash, Murat Akbacak, Andreas Stolcke
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Publication number: 20150370787Abstract: Systems and methods are provided for improving language models for speech recognition by adapting knowledge sources utilized by the language models to session contexts. A knowledge source, such as a knowledge graph, is used to capture and model dynamic session context based on user interaction information from usage history, such as session logs, that is mapped to the knowledge source. From sequences of user interactions, higher level intent sequences may be determined and used to form models that anticipate similar intents but with different arguments including arguments that do not necessarily appear in the usage history. In this way, the session context models may be used to determine likely next interactions or “turns” from a user, given a previous turn or turns. Language models corresponding to the likely next turns are then interpolated and provided to improve recognition accuracy of the next turn received from the user.Type: ApplicationFiled: June 18, 2014Publication date: December 24, 2015Inventors: Murat Akbacak, Dilek Z. Hakkani-Tur, Gokhan Tur, Larry P. Heck
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Publication number: 20150332670Abstract: Systems and methods are provided for training language models using in-domain-like data collected automatically from one or more data sources. The data sources (such as text data or user-interactional data) are mined for specific types of data, including data related to style, content, and probability of relevance, which are then used for language model training. In one embodiment, a language model is trained from features extracted from a knowledge graph modified into a probabilistic graph, where entity popularities are represented and the popularity information is obtained from data sources related to the knowledge. Embodiments of language models trained from this data are particularly suitable for domain-specific conversational understanding tasks where natural language is used, such as user interaction with a game console or a personal assistant application on personal device.Type: ApplicationFiled: May 15, 2014Publication date: November 19, 2015Applicant: Microsoft CorporationInventors: Murat Akbacak, Dilek Z. Hakkani-Tur, Gokhan Tur, Larry P. Heck, Benoit Dumoulin
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Publication number: 20150332672Abstract: Systems and methods are provided for improving language models for speech recognition by personalizing knowledge sources utilized by the language models to specific users or user-population characteristics. A knowledge source, such as a knowledge graph, is personalized for a particular user by mapping entities or user actions from usage history for the user, such as query logs, to the knowledge source. The personalized knowledge source may be used to build a personal language model by training a language model with queries corresponding to entities or entity pairs that appear in usage history. In some embodiments, a personalized knowledge source for a specific user can be extended based on personalized knowledge sources of similar users.Type: ApplicationFiled: May 16, 2014Publication date: November 19, 2015Applicant: Microsoft CorporationInventors: Murat Akbacak, Dilek Z. Hakkani-Tur, Gokhan Tur, Larry P. Heck, Benoit Dumoulin
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Publication number: 20150046418Abstract: One or more techniques and/or systems are provided for maintaining user tagged content. For example, a user may experience content (e.g., watch a scene of a movie, create a photo, create a social network post, read an email, etc.), which the user may desire to save and/or organize for later retrieval. Accordingly, a personalization tag for the content may be received from the user (e.g., “Paris vacation photo”). The content may be indexed with the personalization tag within a personalization index (e.g., a cloud-based index for the user that may be accessible to any device associated with the user). In this way, the user may retrieve the content at a later point in time from any device. For example, a search query “Paris photos” may be received from the user. The personalization index may be queried using the search query to identify content that may be provided to the user.Type: ApplicationFiled: August 9, 2013Publication date: February 12, 2015Applicant: Microsoft CorporationInventors: Murat Akbacak, Benoit Dumoulin
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Publication number: 20120029904Abstract: The present invention relates to a method and apparatus for adding new vocabulary to interactive translation and dialogue systems. In one embodiment, a method for adding a new word to a vocabulary of an interactive dialogue includes receiving an input signal that includes at least one word not currently in the vocabulary, inserting the word into a dynamic component of a search graph associated with the vocabulary, and compiling the dynamic component independently of a permanent component of the search graph to produce a new sub-grammar, where the permanent component comprises a plurality of words that are permanently part of the search graph.Type: ApplicationFiled: July 30, 2010Publication date: February 2, 2012Inventors: KRISTIN PRECODA, HORACIO FRANCO, JING ZHENG, MICHAEL FRANDSEN, VICTOR ABRASH, MURAT AKBACAK, ANDREAS STOLCKE