Method for supervised graph sparsification

    公开(公告)号:US11610114B2

    公开(公告)日:2023-03-21

    申请号:US16675596

    申请日:2019-11-06

    Abstract: A method for employing a supervised graph sparsification (SGS) network to use feedback from subsequent graph learning tasks to guide graph sparsification is presented. The method includes, in a training phase, generating sparsified subgraphs by edge sampling from input training graphs following a learned distribution, feeding the sparsified subgraphs to a prediction/classification component, collecting a predication/classification error, and updating parameters of the learned distribution based on a gradient derived from the predication/classification error. The method further includes, in a testing phase, generating sparsified subgraphs by edge sampling from input testing graphs following the learned distribution, feeding the sparsified subgraphs to the prediction/classification component, and outputting prediction/classification results to a visualization device.

    MODULAR NETWORKS WITH DYNAMIC ROUTING FOR MULTI-TASK RECURRENT MODULES

    公开(公告)号:US20210232919A1

    公开(公告)日:2021-07-29

    申请号:US17158483

    申请日:2021-01-26

    Abstract: Methods and systems for training a neural network model include training a modular neural network model, which has a shared encoder and one or more task-specific decoders, including training one or more policy networks that control connections between the shared encoder and the one or more task-specific decoders in accordance with multiple tasks. A multitask neural network model is trained for the multiple tasks, with an output of the modular neural network model and the multitask neural network model being combined to form a final output.

    TEMPORAL BEHAVIOR ANALYSIS OF NETWORK TRAFFIC

    公开(公告)号:US20200092315A1

    公开(公告)日:2020-03-19

    申请号:US16562805

    申请日:2019-09-06

    Abstract: Systems and methods for implementing sequence data based temporal behavior analysis (SDTBA) to extract features for characterizing temporal behavior of network traffic are provided. The method includes extracting communication and profile data associated with one or more devices to determine sequences of data associated with the devices. The method includes generating temporal features to model anomalous network traffic. The method also includes inputting, into an anomaly detection process for anomalous network traffic, the temporal features and the sequences of data associated with the devices and formulating a list of prediction results of anomalous network traffic associated with the devices.

    INTERPRETING CONVOLUTIONAL SEQUENCE MODEL BY LEARNING LOCAL AND RESOLUTION-CONTROLLABLE PROTOTYPES

    公开(公告)号:US20240037397A1

    公开(公告)日:2024-02-01

    申请号:US18479385

    申请日:2023-10-02

    CPC classification number: G06N3/08 G06N3/04

    Abstract: A method interprets a convolutional sequence model. The method converts an input data sequence having input segments into output features. The method clusters the input segments into clusters using respective resolution-controllable class prototypes allocated to each of classes. Each respective class prototype includes a respective output feature subset characterizing a respective associated class. The method calculates, using the clusters, similarity scores that indicate a similarity of an output feature to a respective class prototypes responsive to distances between the output feature and the respective class prototypes. The method concatenates the similarity scores to obtain a similarity vector. The method performs a prediction and prediction support operation that provides a value of prediction and an interpretation for the value responsive to the input segments and similarity vector. The interpretation for the value of prediction is provided using only non-negative weights and lacking a weight bias in the fully connected layer.

    INTERPRETING CONVOLUTIONAL SEQUENCE MODEL BY LEARNING LOCAL AND RESOLUTION-CONTROLLABLE PROTOTYPES

    公开(公告)号:US20240028897A1

    公开(公告)日:2024-01-25

    申请号:US18479326

    申请日:2023-10-02

    CPC classification number: G06N3/08 G06N3/04

    Abstract: A method interprets a convolutional sequence model. The method converts an input data sequence having input segments into output features. The method clusters the input segments into clusters using respective resolution-controllable class prototypes allocated to each of classes. Each respective class prototype includes a respective output feature subset characterizing a respective associated class. The method calculates, using the clusters, similarity scores that indicate a similarity of an output feature to a respective class prototypes responsive to distances between the output feature and the respective class prototypes. The method concatenates the similarity scores to obtain a similarity vector. The method performs a prediction and prediction support operation that provides a value of prediction and an interpretation for the value responsive to the input segments and similarity vector. The interpretation for the value of prediction is provided using only non-negative weights and lacking a weight bias in the fully connected layer.

    MEDICAL EVENT PREDICTION USING A PERSONALIZED DUAL-CHANNEL COMBINER NETWORK

    公开(公告)号:US20240013920A1

    公开(公告)日:2024-01-11

    申请号:US18370074

    申请日:2023-09-19

    CPC classification number: G16H50/20 G06N3/08 G16H10/60 G06N3/047

    Abstract: Systems and methods for predicting an occurrence of a medical event for a patient using a trained neural network. Historical patient data is preprocessed to generate normalized training samples, and the normalized training samples are sent to a personalized deep convolutional neural network for model pretraining and updating of model parameters. The pretrained model is stored in a remote server for utilization by a local machine for personalization during a preparation time period for a medical treatment. A normalized finetuning set is generated as output, and the model parameters are iteratively finetuned. A personal prediction score for future medical events is generated, and an operation of a medical treatment device is controlled responsive to the prediction score.

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