Patents by Inventor Xiaodong He

Xiaodong He 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: 20160323398
    Abstract: Techniques for providing a people recommendation system for predicting and recommending relevant people (or other entities) to include in a conversation based on contextual indicators. In an exemplary embodiment, email recipient recommendations may be suggested based on contextual signals, e.g., project names, body text, existing recipients, current date and time, etc. In an aspect, a plurality of properties including ranked key phrases are associated with profiles corresponding to personal entities. Aggregated profiles are analyzed using first- and second-layer processing techniques. The recommendations may be provided to the user reactively, e.g., in response to a specific query by the user to the people recommendation system, or proactively, e.g., based on the context of what the user is currently working on, in the absence of a specific query by the user.
    Type: Application
    Filed: July 22, 2015
    Publication date: November 3, 2016
    Inventors: Chenlei Guo, Jianfeng Gao, Xinying Song, Byungki Byun, Yelong Shen, Ye-Yi Wang, Brian D. Remick, Edward Thiele, Mohammed Aatif Ali, Marcus Gois, Xiaodong He, Jianshu Chen, Divya Jetley, Stephen Friesen
  • Publication number: 20160321321
    Abstract: A deep structured semantic module (DSSM) is described herein which uses a model that is discriminatively trained based on click-through data, e.g., such that a conditional likelihood of clicked documents, given respective queries, is maximized, and a condition likelihood of non-clicked documents, given the queries, is reduced. In operation, after training is complete, the DSSM maps an input item into an output item expressed in a semantic space, using the trained model. To facilitate training and runtime operation, a dimensionality-reduction module (DRM) can reduce the dimensionality of the input item that is fed to the DSSM. A search engine may use the above-summarized functionality to convert a query and a plurality of documents into the common semantic space, and then determine the similarity between the query and documents in the semantic space. The search engine may then rank the documents based, at least in part, on the similarity measures.
    Type: Application
    Filed: July 12, 2016
    Publication date: November 3, 2016
    Applicant: Microsoft Technology Licensing, LLC
    Inventors: Po-Sen Huang, Xiaodong He, Jianfeng Gao, Li Deng, Alejandro Acero, Larry P. Heck
  • Patent number: 9477654
    Abstract: Functionality is described herein for transforming first and second symbolic linguistic items into respective first and second continuous-valued concept vectors, using a deep learning model, such as a convolutional latent semantic model. The model is designed to capture both the local and global linguistic contexts of the linguistic items. The functionality then compares the first concept vector with the second concept vector to produce a similarity measure. More specifically, the similarity measure expresses the closeness between the first and second linguistic items in a high-level semantic space. In one case, the first linguistic item corresponds to a query, and the second linguistic item may correspond to a phrase, or a document, or a keyword, or an ad, etc. In one implementation, the convolutional latent semantic model is produced in a training phase based on click-through data.
    Type: Grant
    Filed: April 1, 2014
    Date of Patent: October 25, 2016
    Assignee: Microsoft Corporation
    Inventors: Xiaodong He, Jianfeng Gao, Li Deng, Qiang Lou, Yunhong Zhou, Guowei Liu, Gregory T. Buehrer, Jianchang Mao, Yelong Shen, Ruofei Zhang
  • Patent number: 9292783
    Abstract: The present invention provides a radio frequency identification electronic tag with diversion-proof function and a process for making the same. The radio frequency identification electronic tag with diversion-proof function is formed of a supporting layer, a release liner, an antenna and a chip, wherein the release liner is bonded to one side of the supporting layer to form an entity, the antenna is bonded to the other side of the release liner, or, the antenna is bonded to the two sides of the entity formed by the supporting layer and the release liner, and is connected via overbridge points on the antenna, the overbridge points run through the supporting layer and the release liner so that antennas at the two sides are switched into conduction; the chip is bonded to the antenna. Once the RFID tag with diversion-proof function is peeled off or transferred, its physical structure will be destroyed and the information contained therein cannot be read, achieving the object of incapable of being reused.
    Type: Grant
    Filed: March 20, 2012
    Date of Patent: March 22, 2016
    Assignees: SHANGHAI TECHSUN ANTICOUNTERFEITING TECHNOLOGY HOL, SHANGHAI TECHSUN RFID TECHNOLOGY CO., LTD.
    Inventors: Liangheng Xu, Kai Yang, Yun Gao, Jin Tao, Xiaodong He
  • Publication number: 20150363688
    Abstract: An “Interestingness Modeler” uses deep neural networks to learn deep semantic models (DSM) of “interestingness.” The DSM, consisting of two branches of deep neural networks or their convolutional versions, identifies and predicts target documents that would interest users reading source documents. The learned model observes, identifies, and detects naturally occurring signals of interestingness in click transitions between source and target documents derived from web browser logs. Interestingness is modeled with deep neural networks that map source-target document pairs to feature vectors in a latent space, trained on document transitions in view of a “context” and optional “focus” of source and target documents. Network parameters are learned to minimize distances between source documents and their corresponding “interesting” targets in that space.
    Type: Application
    Filed: June 13, 2014
    Publication date: December 17, 2015
    Inventors: Jianfeng Gao, Li Deng, Michael Gamon, Xiaodong He, Patrick Pantel
  • Patent number: 9201871
    Abstract: A joint optimization strategy is employed for combining translation hypotheses from multiple machine-translation systems. Decisions on word alignment, between the hypotheses, ordering, and selection of a combined translation output are made jointly in accordance with a set of features. Additional features that model alignment and ordering behavior are also provided and utilized.
    Type: Grant
    Filed: June 11, 2010
    Date of Patent: December 1, 2015
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Xiaodong He, Kristina Toutanova
  • Publication number: 20150293976
    Abstract: A search engine is described herein for providing search results based on a context in which a query has been submitted, as expressed by context information. The search engine operates by ranking a plurality of documents based on a consideration of the query, and based, in part, on a context concept vector and a plurality of document concept vectors, both generated using a deep learning model (such as a deep neural network). The context concept vector is formed by a projection of the context information into a semantic space using the deep learning model. Each document concept vector is formed by a projection of document information, associated with a particular document, into the same semantic space using the deep learning model. The ranking operates by favoring documents that are relevant to the context within the semantic space, and disfavoring documents that are not relevant to the context.
    Type: Application
    Filed: April 14, 2014
    Publication date: October 15, 2015
    Inventors: Chenlei Guo, Jianfeng Gao, Ye-Yi Wang, Li Deng, Xiaodong He
  • Publication number: 20150278200
    Abstract: Functionality is described herein for transforming first and second symbolic linguistic items into respective first and second continuous-valued concept vectors, using a deep learning model, such as a convolutional latent semantic model. The model is designed to capture both the local and global linguistic contexts of the linguistic items. The functionality then compares the first concept vector with the second concept vector to produce a similarity measure. More specifically, the similarity measure expresses the closeness between the first and second linguistic items in a high-level semantic space. In one case, the first linguistic item corresponds to a query, and the second linguistic item may correspond to a phrase, or a document, or a keyword, or an ad, etc. In one implementation, the convolutional latent semantic model is produced in a training phase based on click-through data.
    Type: Application
    Filed: April 1, 2014
    Publication date: October 1, 2015
    Applicant: Microsoft Corporation
    Inventors: Xiaodong He, Jianfeng Gao, Li Deng, Qiang Lou, Yunhong Zhou, Guowei Liu, Gregory T. Buehrer, Jianchang Mao, Yelong Shen, Ruofei Zhang
  • Publication number: 20150221568
    Abstract: The present invention provides a semiconductor test structure for MOSFET noise testing. The semiconductor test structure includes: a MOSFET device having a first conductivity type formed on a first well region of a semiconductor substrate; a metal shielding layer formed on the MOSFET device, the metal shielding layer completely covering the MOSFET device and extending beyond the circumference of the first well region; a deep well region having a second conductivity type formed in the semiconductor substrate close to the bottom surface of the first well region, the deep well region extending beyond the circumference of the first well region; wherein a vertical via is formed between the portion of the metal shielding layer extending beyond the first well region and the portion of the deep well region extending beyond the first well region to couple the metal shielding layer to the deep well region.
    Type: Application
    Filed: September 4, 2013
    Publication date: August 6, 2015
    Inventor: Xiaodong He
  • Publication number: 20150074027
    Abstract: A deep structured semantic module (DSSM) is described herein which uses a model that is discriminatively trained based on click-through data, e.g., such that a conditional likelihood of clicked documents, given respective queries, is maximized, and a condition likelihood of non-clicked documents, given the queries, is reduced. In operation, after training is complete, the DSSM maps an input item into an output item expressed in a semantic space, using the trained model. To facilitate training and runtime operation, a dimensionality-reduction module (DRM) can reduce the dimensionality of the input item that is fed to the DSSM. A search engine may use the above-summarized functionality to convert a query and a plurality of documents into the common semantic space, and then determine the similarity between the query and documents in the semantic space. The search engine may then rank the documents based, at least in part, on the similarity measures.
    Type: Application
    Filed: September 6, 2013
    Publication date: March 12, 2015
    Applicant: Microsoft Corporation
    Inventors: Po-Sen Huang, Xiaodong He, Jianfeng Gao, Li Deng, Alejandro Acero, Larry P. Heck
  • Publication number: 20150066496
    Abstract: Technologies pertaining to slot filling are described herein. A deep neural network, a recurrent neural network, and/or a spatio-temporally deep neural network are configured to assign labels to words in a word sequence set forth in natural language. At least one label is a semantic label that is assigned to at least one word in the word sequence.
    Type: Application
    Filed: September 2, 2013
    Publication date: March 5, 2015
    Applicant: Microsoft Corporation
    Inventors: Anoop Deoras, Kaisheng Yao, Xiaodong He, Li Deng, Geoffrey Gerson Zweig, Ruhi Sarikaya, Dong Yu, Mei-Yuh Hwang, Gregoire Mesnil
  • Publication number: 20140365201
    Abstract: Various technologies described herein pertain to training and utilizing a general, statistical framework for modeling translation via Markov random fields (MRFs). An MRF-based translation model can be employed in a statistical machine translation (SMT) system. The MRF-based translation model allows for arbitrary features extracted from a phrase pair to be incorporated as evidence. The parameters of the model are estimated using a large-scale discriminative training approach based on stochastic gradient ascent and an N-best list based expected Bilingual Evaluation Understudy (BLEU) as an objective function.
    Type: Application
    Filed: February 18, 2014
    Publication date: December 11, 2014
    Applicant: Microsoft Corporation
    Inventors: Jianfeng Gao, Xiaodong He
  • Patent number: 8909573
    Abstract: An alteration candidate for a query can be scored. The scoring may include computing one or more query-dependent feature scores and/or one or more intra-candidate dependent feature scores. The computation of the query-dependent feature score(s) can be based on dependencies to multiple query terms from each of one or more alteration terms (i.e., for each of the one or more alteration terms, there can be dependencies to multiple query terms that form at least a portion of the basis for the query-dependent feature score(s)). The computation of the intra-candidate dependent feature score(s) can be based on dependencies between different terms in the alteration candidate. A candidate score can be computed using the query dependent feature score(s) and/or the intra-candidate dependent feature score(s). Additionally, the candidate score can be used in determining whether to select the candidate to expand the query. If selected, the candidate can be used to expand the query.
    Type: Grant
    Filed: July 29, 2013
    Date of Patent: December 9, 2014
    Assignee: Microsoft Corporation
    Inventors: Shasha Xie, Xiaodong He, Jianfeng Gao
  • Publication number: 20140326790
    Abstract: The present invention provides a radio frequency identification electronic tag with diversion-proof function and a process for making the same. The radio frequency identification electronic tag with diversion-proof function is formed of a supporting layer, a release liner, an antenna and a chip, wherein the release liner is bonded to one side of the supporting layer to form an entity, the antenna is bonded to the other side of the release liner, or, the antenna is bonded to the two sides of the entity formed by the supporting layer and the release liner, and is connected via overbridge points on the antenna, the overbridge points run through the supporting layer and the release liner so that antennas at the two sides are switched into conduction; the chip is bonded to the antenna. Once the RFID tag with diversion-proof function is peeled off or transferred, its physical structure will be destroyed and the information contained therein cannot be read, achieving the object of incapable of being reused.
    Type: Application
    Filed: March 20, 2012
    Publication date: November 6, 2014
    Applicant: SHANGHAI TECHSUN RFID TECHNOLOGY CO., LTD.
    Inventors: Liangheng Xu, Kai Yang, Yun Gao, Jin Tao, Xiaodong He
  • Publication number: 20140279995
    Abstract: Methods, systems, and computer-readable media for query simplification are provided. A search engine executed by a server receives a query. In response, the search engine determines whether the query is a long or hard query. For long or hard queries, the search engine drops one or more terms based on search engine logs. The search engine may utilize statistical models like machine translation, condition random fields, or max entropy, to identify the terms that should be dropped. The search engine obtains search results for the simplified query and transmits the results to a user that provided the query.
    Type: Application
    Filed: March 14, 2013
    Publication date: September 18, 2014
    Applicant: MICROSOFT CORPORATION
    Inventors: Ye-Yi Wang, Xiaodong He, Xiaolong Li, Shihao Ji, Bin Zhang
  • Patent number: 8838433
    Abstract: An architecture is discussed that provides the capability to subselect the most relevant data from an out-domain corpus to use either in isolation or in combination conjunction with in-domain data. The architecture is a domain adaptation for machine translation that selects the most relevant sentences from a larger general-domain corpus of parallel translated sentences. The methods for selecting the data include monolingual cross-entropy measure, monolingual cross-entropy difference, bilingual cross entropy, and bilingual cross-entropy difference. A translation model is trained on both the in-domain data and an out-domain subset, and the models can be interpolated together to boost performance on in-domain translation tasks.
    Type: Grant
    Filed: February 8, 2011
    Date of Patent: September 16, 2014
    Assignee: Microsoft Corporation
    Inventors: Amittai Axelrod, Jianfeng Gao, Xiaodong He
  • Patent number: 8732151
    Abstract: Systems, methods, and computer media for identifying query rewriting replacement terms are provided. A list of related string pairs each comprising a first string and second string is received. The first string of each related string pair is a user search query extracted from user click log data. For one or more of the related string pairs, the string pair is provided as inputs to a statistical machine translation model. The model identifies one or more pairs of corresponding terms, each pair of corresponding terms including a first term from the first string and a second term from the second string. The model also calculates a probability of relatedness for each of the one or more pairs of corresponding terms. Term pairs whose calculated probability of relatedness exceeds a threshold are characterized as query term replacements and incorporated, along with the probability of relatedness, into a query rewriting candidate database.
    Type: Grant
    Filed: April 1, 2011
    Date of Patent: May 20, 2014
    Assignee: Microsoft Corporation
    Inventors: Alnur Ali, Jianfeng Gao, Xiaodong He, Bodo von Billerbeck, Sanaz Ahari
  • Publication number: 20130311504
    Abstract: An alteration candidate for a query can be scored. The scoring may include computing one or more query-dependent feature scores and/or one or more intra-candidate dependent feature scores. The computation of the query-dependent feature score(s) can be based on dependencies to multiple query terms from each of one or more alteration terms (i.e., for each of the one or more alteration terms, there can be dependencies to multiple query terms that form at least a portion of the basis for the query-dependent feature score(s)). The computation of the intra-candidate dependent feature score(s) can be based on dependencies between different terms in the alteration candidate. A candidate score can be computed using the query dependent feature score(s) and/or the intra-candidate dependent feature score(s). Additionally, the candidate score can be used in determining whether to select the candidate to expand the query. If selected, the candidate can be used to expand the query.
    Type: Application
    Filed: July 29, 2013
    Publication date: November 21, 2013
    Applicant: Microsoft Corporation
    Inventors: Shasha Xie, Xiaodong He, Jianfeng Gao
  • Patent number: 8548791
    Abstract: A method of determining the consistency of training data for a machine translation system is disclosed. The method includes receiving a signal indicative of a source language corpus and a target language corpus. A textual string is extracted from the source language corpus. The textual string is aligned with the target language corpus to identify a translation for the textual string from the target language corpus. A consistency index is calculated based on a relationship between the textual string from the source language corpus and the translation. An indication of the consistency index is stored on a tangible medium.
    Type: Grant
    Filed: August 29, 2007
    Date of Patent: October 1, 2013
    Assignee: Microsoft Corporation
    Inventors: Masaki Itagaki, Takako Aikawa, Xiaodong He
  • Patent number: D771310
    Type: Grant
    Filed: November 30, 2015
    Date of Patent: November 8, 2016
    Assignee: Zhuhai Jindao Electric Appliance Co., Ltd.
    Inventor: XiaoDong He