Patents by Inventor Marko Krema

Marko Krema 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: 8504492
    Abstract: A body of text comprises a plurality of unknown attributes and a plurality of unknown values. A first classification sub-component labels a first portion of the plurality of unknown values as a first set of values, whereas a second classification sub-component labels a portion of the plurality of unknown attributes as a set of attributes and a second portion of the plurality of unknown values as a second set of values. Learning models implemented by the first and second classification subcomponents are updated based on the set of attributes and the first and second set of values. The first classification sub-component implements at least one supervised classification technique, whereas the second classification sub-component implements an unsupervised and/or semi-supervised classification technique. Active learning may be employed to provide at least one of a corrected attribute and/or corrected value that may be used to update the learning models.
    Type: Grant
    Filed: January 10, 2011
    Date of Patent: August 6, 2013
    Assignee: Accenture Global Services Limited
    Inventors: Rayid Ghani, Chad Cumby, Marko Krema
  • Publication number: 20130054502
    Abstract: A plurality of topics encompassed in a document are determined and, for each such topic, a sentiment for that topic is likewise determined. Thereafter, credibility of the document is determined based on the resulting plurality of sentiments. In one embodiment, credibility of at least one target document is established by first determining, for each of a plurality of portions of the at least one target document, at least one topic encompassed in the portion to provide a plurality of target topics. Likewise, sentiment scores are determined for each portion. Thereafter, for each prior topic of a plurality of prior topics, a topic-sentiment score is determined based on sentiment scores corresponding to those portions of the plurality of portions having a target topic corresponding to the prior topic. A credibility index is determined based on the resulting plurality of topic-sentiment scores.
    Type: Application
    Filed: August 30, 2011
    Publication date: February 28, 2013
    Applicant: Accenture Global Services Limited
    Inventors: Andrew E. Fano, Chad Cumby, Marko Krema, Sai P. Kandallu
  • Publication number: 20130018825
    Abstract: In a machine learning system in which a plurality of learned models, each corresponding to a unique domain, already exist, new domain input for training a new domain model may be provided. Statistical characteristics of features in the new domain input are first determined. The resulting new domain statistical characteristics are then compared with statistical characteristics of features in prior input previously provided for training at least some of the plurality of learned models. Thereafter, at least one learned model of the plurality of learned models is identified as the basis for the new domain model when the new domain input statistical characteristics compare favorably with the statistical characteristics of the features in the prior input corresponding to the at least one learned model.
    Type: Application
    Filed: July 11, 2011
    Publication date: January 17, 2013
    Applicant: Accenture Global Services Limited
    Inventors: Rayid GHANI, Marko Krema
  • Publication number: 20130018651
    Abstract: A generative model is used to develop at least one topic model and at least one sentiment model for a body of text. The at least one topic model is displayed such that, in response, a user may provide user input indicating modifications to the at least one topic model. Based on the received user input, the generative model is used to provide at least one updated topic model and at least one updated sentiment model based on the user input. Thereafter, the at least one updated topic model may again be displayed in order to solicit further user input, which further input is then used to once again update the models. The at least one updated topic model and the at least one updated sentiment model may be employed to analyze target text in order to identify topics and associated sentiments therein.
    Type: Application
    Filed: July 10, 2012
    Publication date: January 17, 2013
    Applicant: Accenture Global Services Limited
    Inventors: Divna Djordjevic, Rayid Ghani, Marko Krema
  • Publication number: 20130018824
    Abstract: Method and apparatus are provided for providing one or more sentiment classifiers from training data using supervised classification techniques based on features extracted from the training data. Training data includes a plurality of units such as, but not limited to, documents, paragraphs, sentences, and clauses. A feature extraction component extracts a plurality of features from the training data, and a feature value determination component determines a value for each extracted feature based on a frequency at which each feature occurs in the training data. On the other hand, a class labeling component labels each unit of the training data according to a plurality of sentiment classes to provide labeled training data. Thereafter, a sentiment classifier generation component provides a least one sentiment classifier based on the value of each extracted feature and the labeled training data using a supervised classification technique.
    Type: Application
    Filed: July 11, 2011
    Publication date: January 17, 2013
    Inventors: Rayid Ghani, Marko Krema
  • Publication number: 20120179453
    Abstract: Performance of statistical machine learning techniques, particularly classification techniques applied to the extraction of attributes and values concerning products, is improved by preprocessing a body of text to be analyzed to remove extraneous information. The body of text is split into a plurality of segments. In an embodiment, sentence identification criteria are applied to identify sentences as the plurality of segments. Thereafter, the plurality of segments are clustered to provide a plurality of clusters. One or more of the resulting clusters are then analyzed to identify segments having low relevance to their respective clusters. Such low relevance segments are then removed from their respective clusters and, consequently, from the body of text. As the resulting relevance-filtered body of text no longer includes portions of the body of text containing mostly extraneous information, the reliability of any subsequent statistical machine learning techniques may be improved.
    Type: Application
    Filed: January 10, 2011
    Publication date: July 12, 2012
    Applicant: Accenture Global Services Limited
    Inventors: Rayid Ghani, Chad Cumby, Marko Krema
  • Publication number: 20120179633
    Abstract: A body of text comprises a plurality of unknown attributes and a plurality of unknown values. A first classification sub-component labels a first portion of the plurality of unknown values as a first set of values, whereas a second classification sub-component labels a portion of the plurality of unknown attributes as a set of attributes and a second portion of the plurality of unknown values as a second set of values. Learning models implemented by the first and second classification subcomponents are updated based on the set of attributes and the first and second set of values. The first classification sub-component implements at least one supervised classification technique, whereas the second classification sub-component implements an unsupervised and/or semi-supervised classification technique. Active learning may be employed to provide at least one of a corrected attribute and/or corrected value that may be used to update the learning models.
    Type: Application
    Filed: January 10, 2011
    Publication date: July 12, 2012
    Applicant: ACCENTURE GLOBAL SERVICES LIMITED
    Inventors: Rayid Ghani, Chad Cumby, Marko Krema
  • Publication number: 20120123844
    Abstract: A method and system for using individualized customer models when operating a retail establishment is provided. The individualized customer models may be generated using statistical analysis of transaction data for the customer, thereby generating sub-models and attributes tailored to customer. The individualized customer models may be used in any aspect of a retail establishment's operations, ranging from supply chain management issues, inventory control, promotion planning (such as selecting parameters for a promotion or simulating results of a promotion), to customer interaction (such as providing a shopping list or providing individualized promotions).
    Type: Application
    Filed: December 21, 2011
    Publication date: May 17, 2012
    Applicant: ACCENTURE GLOBAL SERVICES LIMITED
    Inventors: Andrew E. Fano, Chad M. Cumby, Rayid Ghani, Marko Krema
  • Publication number: 20120036100
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Application
    Filed: August 4, 2011
    Publication date: February 9, 2012
    Applicant: Accenture Global Services Limited
    Inventors: Katharina Probst, Rayid Ghani, Andrew E. Fano, Marko Krema, Yan Liu
  • Publication number: 20110246467
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Application
    Filed: June 13, 2011
    Publication date: October 6, 2011
    Applicant: Accenture Global Services Limited
    Inventors: Katharina PROBST, Rayid GHANI, Andrew E. FANO, Marko KREMA, Yan LIU
  • Publication number: 20110208569
    Abstract: A method and system for using individualized customer models when operating a retail establishment is provided. The individualized customer models may be generated using statistical analysis of transaction data for the customer, thereby generating sub-models and attributes tailored to customer. The individualized customer models may be used in any aspect of a retail establishment's operations, ranging from supply chain management issues, inventory control, promotion planning (such as selecting parameters for a promotion or simulating results of a promotion), to customer interaction (such as providing a shopping list or providing individualized promotions).
    Type: Application
    Filed: May 3, 2011
    Publication date: August 25, 2011
    Applicant: ACCENTURE GLOBAL SERVICES LIMITED
    Inventors: Andrew E. Fano, Chad M. Cumby, Rayid Ghani, Marko Krema
  • Patent number: 7996440
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Grant
    Filed: April 30, 2007
    Date of Patent: August 9, 2011
    Assignee: Accenture Global Services Limited
    Inventors: Katharina Probst, Rayid Ghani, Andrew E. Fano, Marko Krema, Yan Liu
  • Patent number: 7970767
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Grant
    Filed: April 30, 2007
    Date of Patent: June 28, 2011
    Assignee: Accenture Global Services Limited
    Inventors: Katharina Probst, Rayid Ghani, Andrew E. Fano, Marko Krema, Yan Liu
  • Patent number: 7945473
    Abstract: A method and system for using individualized customer models when operating a retail establishment is provided. The individualized customer models may be generated using statistical analysis of transaction data for the customer, thereby generating sub-models and attributes tailored to customer. The individualized customer models may be used in any aspect of a retail establishment's operations, ranging from supply chain management issues, inventory control, promotion planning (such as selecting parameters for a promotion or simulating results of a promotion), to customer interaction (such as providing a shopping list or providing individualized promotions).
    Type: Grant
    Filed: February 28, 2005
    Date of Patent: May 17, 2011
    Assignee: Accenture Global Services Limited
    Inventors: Andrew E. Fano, Chad M. Cumby, Rayid Ghani, Marko Krema
  • Publication number: 20070282892
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Application
    Filed: April 30, 2007
    Publication date: December 6, 2007
    Applicant: ACCENTURE
    Inventors: Katharina Probst, Rayid Ghani, Andrew E. Fano, Marko Krema, Yan Liu
  • Publication number: 20070282872
    Abstract: One or more classification algorithms are applied to at least one natural language document in order to extract both attributes and values of a given product. Supervised classification algorithms, semi-supervised classification algorithms, unsupervised classification algorithms or combinations of such classification algorithms may be employed for this purpose. The at least one natural language document may be obtained via a public communication network. Two or more attributes (or two or more values) thus identified may be merged to form one or more attribute phrases or value phrases. Once attributes and values have been extracted in this manner, association or linking operations may be performed to establish attribute-value pairs that are descriptive of the product. In a presently preferred embodiment, an (unsupervised) algorithm is used to generate seed attributes and values which can then support a supervised or semi-supervised classification algorithm.
    Type: Application
    Filed: April 30, 2007
    Publication date: December 6, 2007
    Applicant: Accenture
    Inventors: Katharina Probst, Rayid Ghani, Andrew E. Fano, Marko Krema, Yan Liu
  • Publication number: 20050189414
    Abstract: A method and system for using individualized customer models when operating a retail establishment is provided. The individualized customer models may be generated using statistical analysis of transaction data for the customer, thereby generating sub-models and attributes tailored to customer. The individualized customer models may be used in any aspect of a retail establishment's operations, ranging from supply chain management issues, inventory control, promotion planning (such as selecting parameters for a promotion or simulating results of a promotion), to customer interaction (such as providing a shopping list or providing individualized promotions).
    Type: Application
    Filed: February 28, 2005
    Publication date: September 1, 2005
    Inventors: Andrew Fano, Chad Cumby, Rayid Ghani, Marko Krema
  • Publication number: 20050189415
    Abstract: A method and system for using individualized customer models when operating a retail establishment is provided. The individualized customer models may be generated using statistical analysis of transaction data for the customer, thereby generating sub-models and attributes tailored to customer. The individualized customer models may be used in any aspect of a retail establishment's operations, ranging from supply chain management issues, inventory control, promotion planning (such as selecting parameters for a promotion or simulating results of a promotion), to customer interaction (such as providing a shopping list or providing individualized promotions).
    Type: Application
    Filed: February 28, 2005
    Publication date: September 1, 2005
    Inventors: Andrew Fano, Chad Cumby, Rayid Ghani, Marko Krema