Patents by Inventor Ahmed Said Morsy

Ahmed Said Morsy 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: 9971763
    Abstract: Named entity recognition is described, for example, to detect an instance of a named entity in a web page and classify the named entity as being an organization or other predefined class. In various examples, named entity recognition results are used to augment text from which the named entity was recognized; the augmentation may comprise information retrieval results about the named entity mention. In various embodiments, labeled training sentences in many different languages and for many different classes, are obtained to train machine learning components of a multi-lingual, multi-class, named entity recognition system. In examples, labeled training sentences are obtained from at least two sources, a first source using a multi-lingual or monolingual corpus of inter-linked documents and a second source using machine translation training data. In examples, labeled training sentences from the two sources are selectively sampled for training the named entity recognition system.
    Type: Grant
    Filed: April 8, 2014
    Date of Patent: May 15, 2018
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Eslam Kamal Abdel-Aal Abdel-Reheem, Mohamed Farouk Abdel-Hady, Ahmed Said Morsy, Abubakrelsedik Alsebai Karali, Michel Naim Naguib Gerguis, Achraf Abdel Moneim Tawfik Chalabi, Rania Ibrahim, Nematallah Ali Mahmoud Saleh
  • Publication number: 20150286629
    Abstract: Named entity recognition is described, for example, to detect an instance of a named entity in a web page and classify the named entity as being an organization or other predefined class. In various examples, named entity recognition results are used to augment text from which the named entity was recognized; the augmentation may comprise information retrieval results about the named entity mention. In various embodiments, labeled training sentences in many different languages and for many different classes, are obtained to train machine learning components of a multi-lingual, multi-class, named entity recognition system. In examples, labeled training sentences are obtained from at least two sources, a first source using a multi-lingual or monolingual corpus of inter-linked documents and a second source using machine translation training data. In examples, labeled training sentences from the two sources are selectively sampled for training the named entity recognition system.
    Type: Application
    Filed: April 8, 2014
    Publication date: October 8, 2015
    Applicant: Microsoft Corporation
    Inventors: Eslam Kamal Abdel-Aal Abdel-Reheem, Mohamed Farouk Abdel-Hady, Ahmed Said Morsy, Abubakrelsedik Alsebai Karali, Michel Naim Naguib Gerguis, Achraf Abdel Moneim Tawfik Chalabi, Rania Ibrahim, Nematallah Ali Mahmoud Saleh
  • Patent number: 8990066
    Abstract: Some implementations provide techniques and arrangements to perform automated translation from a source language to a target language. For example, an out-of-vocabulary word may be identified and a morphological analysis may be performed to determine whether the out-of-vocabulary word reduces to at least one stem. If the out-of-vocabulary word reduces to a stem, the stem may be translated. The translated stem may be inflected if the out-of-vocabulary word is inflected. If the out-of-vocabulary word has any affixes, the affixes may be translated. In some cases, the translated affixes may be reordered before being combined with the inflected and translated stem. If the out-of-vocabulary word is misspelled, the spelling of the out-of-vocabulary word may be corrected before performing the morphological analysis. If the out-of-vocabulary word is a colloquial form of a formal word, the out-of-vocabulary word may be replaced with the formal word before performing the morphological analysis.
    Type: Grant
    Filed: January 31, 2012
    Date of Patent: March 24, 2015
    Assignee: Microsoft Corporation
    Inventors: Achraf Chalabi, Ahmed Said Morsy, Hany Awadalla, Mohamed El-Sharqwi, Sayed Hassan
  • Publication number: 20130197896
    Abstract: Some implementations provide techniques and arrangements to perform automated translation from a source language to a target language. For example, an out-of-vocabulary word may be identified and a morphological analysis may be performed to determine whether the out-of-vocabulary word reduces to at least one stem. If the out-of-vocabulary word reduces to a stem, the stem may be translated. The translated stem may be inflected if the out-of-vocabulary word is inflected. If the out-of-vocabulary word has any affixes, the affixes may be translated. In some cases, the translated affixes may be reordered before being combined with the inflected and translated stem. If the out-of-vocabulary word is misspelled, the spelling of the out-of-vocabulary word may be corrected before performing the morphological analysis. If the out-of-vocabulary word is a colloquial form of a formal word, the out-of-vocabulary word may be replaced with the formal word before performing the morphological analysis.
    Type: Application
    Filed: January 31, 2012
    Publication date: August 1, 2013
    Applicant: MICROSOFT CORPORATION
    Inventors: Achraf Chalabi, Ahmed Said Morsy, Hany Awadalla, Mohamed El-Sharqwi, Sayed Hassan