Patents by Inventor Markus Anderle

Markus Anderle 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: 11605118
    Abstract: Embodiments described herein provide an attentive network framework that models dynamic attributes with item and feature interactions. Specifically, the attentive network framework first encodes basket item sequences and dynamic attribute sequences with time-aware padding and time/month encoding to capture the seasonal patterns (e.g. in app recommendation, outdoor activities apps are more suitable for summer time while indoor activity apps are better for winter). Then the attentive network framework applies time-level attention modules on basket items' sequences and dynamic user attributes' sequences to capture basket items to basket items and attributes to attributes temporal sequential patterns. After that, an intra-basket attentive module is used on items in each basket to capture the correlation information among items.
    Type: Grant
    Filed: December 4, 2020
    Date of Patent: March 14, 2023
    Assignee: salesforce.com, inc.
    Inventors: Yongjun Chen, Jia Li, Chenxi Li, Markus Anderle, Caiming Xiong, Simo Arajarvi, Harshavardhan Utharavalli
  • Publication number: 20220058714
    Abstract: Embodiments described herein provide an attentive network framework that models dynamic attributes with item and feature interactions. Specifically, the attentive network framework first encodes basket item sequences and dynamic attribute sequences with time-aware padding and time/month encoding to capture the seasonal patterns (e.g. in app recommendation, outdoor activities apps are more suitable for summer time while indoor activity apps are better for winter). Then the attentive network framework applies time-level attention modules on basket items' sequences and dynamic user attributes' sequences to capture basket items to basket items and attributes to attributes temporal sequential patterns. After that, an intra-basket attentive module is used on items in each basket to capture the correlation information among items.
    Type: Application
    Filed: December 4, 2020
    Publication date: February 24, 2022
    Inventors: Yongjun Chen, Jia Li, Chenxi Li, Markus Anderle, Caiming Xiong, Simo Arajarvi, Harshavardhan Utharavalli
  • Publication number: 20210374132
    Abstract: Embodiments are directed to a machine learning recommendation system. The system receives a user query for generating a recommendation for one or more items with an explanation associated with recommending the one or more items. The system obtains first features of at least one user and second features of a set of items. The system provides the first features and the second features to a first machine learning network for determining a predicted score for an item. The system provides a portion of the first features and a portion of the second features to second machine learning networks for determining explainability scores for an item and generating corresponding explanation narratives. The system provides the recommendation for one or more items and corresponding explanation narratives based on ranking predicted scores and explainability scores for the items.
    Type: Application
    Filed: November 10, 2020
    Publication date: December 2, 2021
    Inventors: Wenzhuo Yang, Jia Li, Chenxi Li, Latrice Barnett, Markus Anderle, Simo Arajarvi, Harshavardhan Utharavalli, Caiming Xiong, Richard Socher, Chu Hong Hoi
  • Patent number: 7087896
    Abstract: Relative quantitative information about components of chemical or biological samples can be obtained from mass spectra by normalizing the spectra to yield peak intensity values that accurately reflect concentrations of the responsible species. A normalization factor is computed from peak intensities of those inherent components whose concentration remains constant across a series of samples. Relative concentrations of a component occurring in different samples can be estimated from the normalized peak intensities. Unlike conventional methods, internal standards or additional reagents are not required. The methods are particularly useful for differential phenotyping in proteomics and metabolomics research, in which molecules varying in concentration across samples are identified. These identified species may serve as biological markers for disease or response to therapy.
    Type: Grant
    Filed: December 27, 2004
    Date of Patent: August 8, 2006
    Assignee: PPD Biomarker Discovery Sciences, LLC
    Inventors: Christopher H. Becker, Curtis A. Hastings, Scott M. Norton, Sushmita Mimi Roy, Weixun Wang, Haihong Zhou, Thomas Andrew Shaler, Praveen Kumar, Markus Anderle, Hua Lin
  • Publication number: 20050116159
    Abstract: Relative quantitative information about components of chemical or biological samples can be obtained from mass spectra by normalizing the spectra to yield peak intensity values that accurately reflect concentrations of the responsible species. A normalization factor is computed from peak intensities of those inherent components whose concentration remains constant across a series of samples. Relative concentrations of a component occurring in different samples can be estimated from the normalized peak intensities. Unlike conventional methods, internal standards or additional reagents are not required. The methods are particularly useful for differential phenotyping in proteomics and metabolomics research, in which molecules varying in concentration across samples are identified. These identified species may serve as biological markers for disease or response to therapy.
    Type: Application
    Filed: December 27, 2004
    Publication date: June 2, 2005
    Applicant: SurroMed, Inc.
    Inventors: Christopher Becker, Curtis Hastings, Scott Norton, Sushmita Roy, Weixun Wang, Haihong Zhou, Thomas Shaler, Praveen Kumar, Markus Anderle, Hua Lin