ARCHITECTURE FOR CLIENT CLOUD BEHAVIOR ANALYZER

    公开(公告)号:IN2173MUN2014A

    公开(公告)日:2015-08-28

    申请号:IN2173MUN2014

    申请日:2014-10-29

    Applicant: QUALCOMM INC

    Abstract: Methods systems and devices for generating data models in a client cloud communication system may include applying machine learning techniques to generate a first family of classifier models that describe a cloud corpus of behavior vectors. Such vectors may be analyzed to identify factors in the first family of classifier models that have the highest probably of enabling a mobile device to conclusively determine whether a mobile device behavior is malicious or benign. Based on this analysis a a second family of classifier models may be generated that identify significantly fewer factors and data points as being relevant for enabling the mobile device to conclusively determine whether the mobile device behavior is malicious or benign based on the determined factors. A mobile device classifier module based on the second family of classifier models may be generated and made available for download by mobile devices including devices contributing behavior vectors.

    MINIMIZING LATENCY OF BEHAVIORAL ANALYSIS USING SIGNATURE CACHES

    公开(公告)号:IN2026MUN2014A

    公开(公告)日:2015-08-14

    申请号:IN2026MUN2014

    申请日:2014-10-14

    Applicant: QUALCOMM INC

    Abstract: The various aspects include methods systems and devices configured to make use of caching techniques and behavior signature caches to improve processor performance and/or reduce the amount of power consumed by the computing device by reducing analyzer latency. The signature caching system may be configured to adapt to rapid and frequent changes in behavioral specifications and models and provide a multi fold improvement in the scalability of behavioral analysis operations performed on the mobile device.

    ON-DEVICE REAL-TIME BEHAVIOR ANALYZER
    3.
    发明申请
    ON-DEVICE REAL-TIME BEHAVIOR ANALYZER 审中-公开
    设备实时行为分析器

    公开(公告)号:WO2013173000A3

    公开(公告)日:2014-01-09

    申请号:PCT/US2013035943

    申请日:2013-04-10

    Applicant: QUALCOMM INC

    CPC classification number: G06N99/005 G06N5/043

    Abstract: Methods, systems and devices for generating data models in a communication system may include applying machine learning techniques to generate a first family of classifier models using a boosted decision tree to describe a corpus of behavior vectors. Such behavior vectors may be used to compute a weight value for one or more nodes of the boosted decision tree. Classifier models factors having a high probably of determining whether a mobile device behavior is benign or not benign based on the computed weight values may be identified. Computing weight values for boosted decision tree nodes may include computing an exclusive answer ratio for generated boosted decision tree nodes. The identified factors may be applied to the corpus of behavior vectors to generate a second family of classifier models identifying fewer factors and data points relevant for enabling the mobile device to determine whether a behavior is benign or not benign.

    Abstract translation: 用于在通信系统中生成数据模型的方法,系统和设备可以包括应用机器学习技术来生成使用加强的决策树来描述行为矢量语料库的分类器模型的第一族。 可以使用这样的行为矢量来计算升压决策树的一个或多个节点的权重值。 可以识别分类器模型的因素,其可能基于所计算的权重值来确定移动设备行为是良性还是不良性。 用于升压的决策树节点的计算权重值可以包括计算生成的升压决策树节点的独占应答比率。 识别的因素可以应用于行为矢量语料库以产生第二类分类器模型,其识别与使移动设备能够确定行为是良性还是不良性相关的较少因素和数据点。

    COLLABORATIVE LEARNING FOR EFFICIENT BEHAVIORAL ANALYSIS IN NETWORKED MOBILE DEVICE
    4.
    发明申请
    COLLABORATIVE LEARNING FOR EFFICIENT BEHAVIORAL ANALYSIS IN NETWORKED MOBILE DEVICE 审中-公开
    网络移动设备有效行为分析的协同学习

    公开(公告)号:WO2013173044A3

    公开(公告)日:2014-07-03

    申请号:PCT/US2013038414

    申请日:2013-04-26

    Applicant: QUALCOMM INC

    Abstract: Methods, systems and devices for classifying mobile device behaviors of a first mobile device may include the first mobile device monitoring mobile device behaviors to generate a behavior vector, and applying the behavior vector to a first classifier model to obtain a first determination of whether a mobile device behavior is benign or not benign. The first mobile device may also send the behavior vector to a second mobile device, which may receive and apply the behavior vector to a second classifier model to obtain a second determination of whether the mobile device behavior is benign or not benign. The second mobile device may send the second determination to the first mobile device, which may receive the second determination, collate the first determination and the second determination to generate collated results, and determine whether the mobile device behavior is benign or not benign based on the collated results.

    Abstract translation: 用于分类第一移动设备的移动设备行为的方法,系统和设备可以包括第一移动设备监视移动设备行为以生成行为向量,以及将行为向量应用于第一分类器模型,以获得移动设备 设备行为是良性还是不良。 第一移动设备还可以将行为向量发送到第二移动设备,第二移动设备可以接收并将行为向量应用于第二分类器模型,以获得移动设备行为是良性还是不良的第二确定。 第二移动设备可以向可能接收第二确定的第一移动设备发送第二确定,对第一确定和第二确定进行整理以生成整理结果,并基于该第二确定来确定移动设备行为是良性还是不良 整理结果。

    ARCHITECTURE FOR CLIENT-CLOUD BEHAVIOR ANALYZER
    5.
    发明申请
    ARCHITECTURE FOR CLIENT-CLOUD BEHAVIOR ANALYZER 审中-公开
    客户行为分析员架构

    公开(公告)号:WO2013173003A2

    公开(公告)日:2013-11-21

    申请号:PCT/US2013035963

    申请日:2013-04-10

    Applicant: QUALCOMM INC

    CPC classification number: G06N99/005 G06F21/552 G06F21/566 G06N5/043

    Abstract: Methods, systems and devices for generating data models in a client-cloud communication system may include applying machine learning techniques to generate a first family of classifier models that describe a cloud corpus of behavior vectors. Such vectors may be analyzed to identify factors in the first family of classifier models that have the highest probably of enabling a mobile device to conclusively determine whether a mobile device behavior is malicious or benign. Based on this analysis, a a second family of classifier models may be generated that identify significantly fewer factors and data points as being relevant for enabling the mobile device to conclusively determine whether the mobile device behavior is malicious or benign based on the determined factors. A mobile device classifier module based on the second family of classifier models may be generated and made available for download by mobile devices, including devices contributing behavior vectors.

    Abstract translation: 用于在客户云通信系统中生成数据模型的方法,系统和设备可以包括应用机器学习技术来生成描述行为矢量的云语料库的分类器模型的第一族。 可以分析这样的向量以识别分类器模型的第一族中的因素,其中最可能使移动设备能够最终确定移动设备行为是恶意还是良性。 基于该分析,可以生成第二系列分类器模型,其识别显着更少的因子和数据点,使其与使得移动设备能够根据确定的因素最终确定移动设备行为是恶意还是良性有关。 可以生成基于第二类分类器模型的移动设备分类器模块,并使其可用于由移动设备(包括贡献行为矢量的设备)进行下载。

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