13 research outputs found

    Clustering versus SVM for Malware Detection

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    Previous work has shown that we can effectively cluster certain classes of mal- ware into their respective families. In this research, we extend this previous work to the problem of developing an automated malware detection system. We first compute clusters for a collection of malware families. Then we analyze the effectiveness of clas- sifying new samples based on these existing clusters. We compare results obtained using �-means and Expectation Maximization (EM) clustering to those obtained us- ing Support Vector Machines (SVM). Using clustering, we are able to detect some malware families with an accuracy comparable to that of SVMs. One advantage of the clustering approach is that there is no need to retrain for new malware families

    Spiritual diversity in psychotherapy (book event panel)

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    000000000000000000000000000000000000000000000000000000061603 - John Templeton Foundation; Agmt dtd 8/11/2021 - Peale FoundationOthe

    Clustering versus SVM for malware detection

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    Clustering versus SVM for Malware Detection

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    Traumatic Experience and Ethnic Identity: Integrating Psychoanalytic and Multicultural Perspectives

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    A documentary on the psychology of modern-day slavery

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    Inner and Outer Realities of Immigrants: Race, Religion, and Social Class

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    The Dilemma of Social Justice in the Psychotherapeutic Relationship

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    Interactive question and answer period

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    A qualitative study of South Asian American adolescent experiences

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