Patents by Inventor Shubhranshu Shekhar

Shubhranshu Shekhar 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: 11403643
    Abstract: The present disclosure relates to utilizing a graph convolutional neural network to generate similarity probabilities between pairs of digital identities associated with digital transactions based on time dependencies for use in identifying fraudulent transactions. For example, the disclosed systems can generate a transaction graph that includes nodes corresponding to digital identities. The disclosed systems can utilize a time-dependent graph convolutional neural network to generate node embeddings for the nodes based on the edge connections of the transaction graph. Further, the disclosed systems can utilize the node embeddings to determine whether a digital identity is associated with a fraudulent transaction.
    Type: Grant
    Filed: January 24, 2020
    Date of Patent: August 2, 2022
    Assignee: Adobe Inc.
    Inventors: Shubhranshu Shekhar, Deepak Pai, Sriram Ravindran
  • Publication number: 20220156645
    Abstract: Techniques are disclosed relating to classifying transactions using post-transaction information. Training architecture may be used to train a first classifier module using first data for a set of transactions as training data input, where the first data includes both pre-transaction information and post-transaction information for transactions in the set of transactions. During training of the first classifier module, in disclosed techniques, correct classifications for the transaction in the set of transactions are known. The training architecture, in disclosed techniques, generates respective weights for multiple transactions in the set of transactions based on classification outputs of the trained first classifier for the multiple transactions. In disclosed techniques, the training architecture trains a second classifier module, based on the generated weights, using second data for the set of transactions as training data input.
    Type: Application
    Filed: January 31, 2022
    Publication date: May 19, 2022
    Inventors: Moein Saleh, Xing Ji, Shubhranshu Shekhar
  • Patent number: 11321632
    Abstract: Techniques are disclosed relating to classifying transactions using post-transaction information. Training architecture may be used to train a first classifier module using first data for a set of transactions as training data input, where the first data includes both pre-transaction information and post-transaction information for transactions in the set of transactions. During training of the first classifier module, in disclosed techniques, correct classifications for the transaction in the set of transactions are known. The training architecture, in disclosed techniques, generates respective weights for multiple transactions in the set of transactions based on classification outputs of the trained first classifier for the multiple transactions. In disclosed techniques, the training architecture trains a second classifier module, based on the generated weights, using second data for the set of transactions as training data input.
    Type: Grant
    Filed: November 21, 2018
    Date of Patent: May 3, 2022
    Assignee: PayPal, Inc.
    Inventors: Moein Saleh, Xing Ji, Shubhranshu Shekhar
  • Publication number: 20210233080
    Abstract: The present disclosure relates to utilizing a graph convolutional neural network to generate similarity probabilities between pairs of digital identities associated with digital transactions based on time dependencies for use in identifying fraudulent transactions. For example, the disclosed systems can generate a transaction graph that includes nodes corresponding to digital identities. The disclosed systems can utilize a time-dependent graph convolutional neural network to generate node embeddings for the nodes based on the edge connections of the transaction graph. Further, the disclosed systems can utilize the node embeddings to determine whether a digital identity is associated with a fraudulent transaction.
    Type: Application
    Filed: January 24, 2020
    Publication date: July 29, 2021
    Inventors: Shubhranshu Shekhar, Deepak Pai, Sriram Ravindran
  • Publication number: 20200160232
    Abstract: Techniques are disclosed relating to classifying transactions using post-transaction information. Training architecture may be used to train a first classifier module using first data for a set of transactions as training data input, where the first data includes both pre-transaction information and post-transaction information for transactions in the set of transactions. During training of the first classifier module, in disclosed techniques, correct classifications for the transaction in the set of transactions are known. The training architecture, in disclosed techniques, generates respective weights for multiple transactions in the set of transactions based on classification outputs of the trained first classifier for the multiple transactions. In disclosed techniques, the training architecture trains a second classifier module, based on the generated weights, using second data for the set of transactions as training data input.
    Type: Application
    Filed: November 21, 2018
    Publication date: May 21, 2020
    Inventors: Moein Saleh, Xing Ji, Shubhranshu Shekhar