Invention Grant
- Patent Title: Tensorized LSTM with adaptive shared memory for learning trends in multivariate time series
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Application No.: US16987789Application Date: 2020-08-07
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Publication No.: US11783181B2Publication Date: 2023-10-10
- Inventor: Wei Cheng , Haifeng Chen , Jingchao Ni , Dongkuan Xu , Wenchao Yu
- Applicant: NEC Laboratories America, Inc.
- Applicant Address: US NJ Princeton
- Assignee: NEC Laboratories America, Inc.
- Current Assignee: NEC Laboratories America, Inc.
- Current Assignee Address: US NJ Princeton
- Agent Joseph Kolodka
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06F17/18 ; G06N5/04 ; G06F18/214 ; G06N3/044 ; G06N3/045

Abstract:
A method for executing a multi-task deep learning model for learning trends in multivariate time series is presented. The method includes collecting multi-variate time series data from a plurality of sensors, jointly learning both local and global contextual features for predicting a trend of the multivariate time series by employing a tensorized long short-term memory (LSTM) with adaptive shared memory (TLASM) to learn historical dependency of historical trends, and employing a multi-task one-dimensional convolutional neural network (1dCNN) to extract salient features from local raw time series data to model a short-term dependency between local time series data and subsequent trends.
Public/Granted literature
- US20220092402A9 TENSORIZED LSTM WITH ADAPTIVE SHARED MEMORY FOR LEARNING TRENDS IN MULTIVARIATE TIME SERIES Public/Granted day:2022-03-24
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