Invention Application
- Patent Title: PREDICTING AND VISUALIZING OUTCOMES USING A TIME-AWARE RECURRENT NEURAL NETWORK
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Application No.: US16394227Application Date: 2019-04-25
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Publication No.: US20200342305A1Publication Date: 2020-10-29
- Inventor: Fan Du , Eunyee Koh , Sungchul Kim , Shunan Guo , Sana Malik Lee
- Applicant: Adobe Inc.
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N5/02 ; G06N20/10 ; G06N7/00

Abstract:
Disclosed systems and methods predict and visualize outcomes based on past events. For example, an analysis application encodes a sequence of events into a feature vector that includes, for each event, a numerical representation of a respective category and a respective timestamp. The application applies a time-aware recurrent neural network to the feature vector, resulting in one or more of (i) a set of future events in which each event is associated with a probability and a predicted duration and (ii) a sequence embedding that contains information about predicted outcomes and temporal patterns observed in the sequence of events. The application applies a support vector model classifier to the sequence embedding. The support vector model classifier computes a likelihood of a categorical outcome for each of the events in the probability distribution. The application modifies interactive content according to the categorical outcomes and probability distribution.
Public/Granted literature
- US11475295B2 Predicting and visualizing outcomes using a time-aware recurrent neural network Public/Granted day:2022-10-18
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