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Physical Sciences and Mathematics Commons

Open Access. Powered by Scholars. Published by Universities.®

Machine Learning

Nova Southeastern University

2017

Articles 1 - 3 of 3

Full-Text Articles in Physical Sciences and Mathematics

Pulsar Search Using Supervised Machine Learning, John M. Ford Jan 2017

Pulsar Search Using Supervised Machine Learning, John M. Ford

CCE Theses and Dissertations

Pulsars are rapidly rotating neutron stars which emit a strong beam of energy through mechanisms that are not entirely clear to physicists. These very dense stars are used by astrophysicists to study many basic physical phenomena, such as the behavior of plasmas in extremely dense environments, behavior of pulsar-black hole pairs, and tests of general relativity. Many of these tasks require information to answer the scientific questions posed by physicists. In order to provide more pulsars to study, there are several large-scale pulsar surveys underway, which are generating a huge backlog of unprocessed data. Searching for pulsars is a very …


Improved Detection For Advanced Polymorphic Malware, James B. Fraley Jan 2017

Improved Detection For Advanced Polymorphic Malware, James B. Fraley

CCE Theses and Dissertations

Malicious Software (malware) attacks across the internet are increasing at an alarming rate. Cyber-attacks have become increasingly more sophisticated and targeted. These targeted attacks are aimed at compromising networks, stealing personal financial information and removing sensitive data or disrupting operations. Current malware detection approaches work well for previously known signatures. However, malware developers utilize techniques to mutate and change software properties (signatures) to avoid and evade detection. Polymorphic malware is practically undetectable with signature-based defensive technologies. Today’s effective detection rate for polymorphic malware detection ranges from 68.75% to 81.25%. New techniques are needed to improve malware detection rates. Improved detection …


Performance Envelopes Of Adaptive Ensemble Data Stream Classifiers, Stefan Joe-Yen Jan 2017

Performance Envelopes Of Adaptive Ensemble Data Stream Classifiers, Stefan Joe-Yen

CCE Theses and Dissertations

This dissertation documents a study of the performance characteristics of algorithms designed to mitigate the effects of concept drift on online machine learning. Several supervised binary classifiers were evaluated on their performance when applied to an input data stream with a non-stationary class distribution. The selected classifiers included ensembles that combine the contributions of their member algorithms to improve overall performance. These ensembles adapt to changing class definitions, known as “concept drift,” often present in real-world situations, by adjusting the relative contributions of their members. Three stream classification algorithms and three adaptive ensemble algorithms were compared to determine the capabilities …