Patents by Inventor Xiaojing Dong

Xiaojing Dong 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: 11227226
    Abstract: Methods, systems, and computer readable storage media are disclosed for generating joint-probabilistic ensemble forecasts for future events based on a plurality of different prediction models for the future events. For example, in one or more embodiments the disclosed system determines error values for various predictions from a plurality of different prediction models (i.e., “forecasters”) for previous events. Moreover, in one or more embodiments the system generates an error probability density function by mapping the error values to an error space and applying a kernel density estimation. Furthermore, the system can apply the error probability density function(s) to a plurality of predictions from the forecasters for a future event to generate a likelihood function and a new prediction for the future event.
    Type: Grant
    Filed: October 13, 2017
    Date of Patent: January 18, 2022
    Assignee: ADOBE INC.
    Inventors: Eugene Chen, Zhenyu Yan, Xiaojing Dong
  • Patent number: 10956930
    Abstract: Dynamic Hierarchical Empirical Bayes techniques and systems are described that are implemented to control output of digital content. In one example, a system identifies splitting variables included in data. An amount of loss is then determined for each of the identified splitting variables by the system using a loss function. Based on the determined amounts of loss, the system selects at least one splitting variable from the plurality of splitting variables that are to be used to partition data in a respective node, e.g., a parent node to form a plurality of child nodes. The system, for instance, may select the splitting variable that minimizes the cost, i.e., has the lowest amount of cost. The selected splitting variable is then employed by the system to generate at least one hierarchical level of the hierarchical structure of the statistical model by partitioning data from the parent node into respective child nodes.
    Type: Grant
    Filed: July 12, 2018
    Date of Patent: March 23, 2021
    Assignee: Adobe Inc.
    Inventors: Yuan Yuan, Zhenyu Yan, Yiwen Sun, Xiaojing Dong, Chen Dong, Abhishek Pani
  • Publication number: 20200089786
    Abstract: Techniques for automatically creating geographic region groups are provided. Attribute data about a plurality of regions is stored. Based on the attribute data, each region is classified as belonging to a tier of multiple tiers. A first set of region groups is generated, where each region group includes at least two regions assigned to different tiers. For each region group, group attribute data for that region group is generated. A comparison of first group attribute data of a first region group is performed with group attribute data of each other region group. Based on results of the comparison, first arrangement data that associates a second region group with the first region group is stored.
    Type: Application
    Filed: September 19, 2018
    Publication date: March 19, 2020
    Inventors: Xiang Cheng, Chen Wang, Michael J. Tambe, Megh Mehta, Xiaojing Dong, Chi-Yi Kuan
  • Publication number: 20200019984
    Abstract: Dynamic Hierarchical Empirical Bayes techniques and systems are described that are implemented to control output of digital content. In one example, a system identifies splitting variables included in data. An amount of loss is then determined for each of the identified splitting variables by the system using a loss function. Based on the determined amounts of loss, the system selects at least one splitting variable from the plurality of splitting variables that are to be used to partition data in a respective node, e.g., a parent node to form a plurality of child nodes. The system, for instance, may select the splitting variable that minimizes the cost, i.e., has the lowest amount of cost. The selected splitting variable is then employed by the system to generate at least one hierarchical level of the hierarchical structure of the statistical model by partitioning data from the parent node into respective child nodes.
    Type: Application
    Filed: July 12, 2018
    Publication date: January 16, 2020
    Applicant: Adobe Inc.
    Inventors: Yuan Yuan, Zhenyu Yan, Yiwen Sun, Xiaojing Dong, Chen Dong, Abhishek Pani
  • Publication number: 20190114554
    Abstract: Methods, systems, and computer readable storage media are disclosed for generating joint-probabilistic ensemble forecasts for future events based on a plurality of different prediction models for the future events. For example, in one or more embodiments the disclosed system determines error values for various predictions from a plurality of different prediction models (i.e., “forecasters”) for previous events. Moreover, in one or more embodiments the system generates an error probability density function by mapping the error values to an error space and applying a kernel density estimation. Furthermore, the system can apply the error probability density function(s) to a plurality of predictions from the forecasters for a future event to generate a likelihood function and a new prediction for the future event.
    Type: Application
    Filed: October 13, 2017
    Publication date: April 18, 2019
    Inventors: Eugene Chen, Zhenyu Yan, Xiaojing Dong