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Collaborating Authors

 Streilein, William W.


Reports of the Workshops of the Thirty-First AAAI Conference on Artificial Intelligence

AI Magazine

Reports of the Workshops of the Thirty-First AAAI Conference on Artificial Intelligence


Reports of the Workshops of the Thirty-First AAAI Conference on Artificial Intelligence

AI Magazine

The AAAI-17 workshop program included 17 workshops covering a wide range of topics in AI. Workshops were held Sunday and Monday, February 4-5, 2017 at the Hilton San Francisco Union Square in San Francisco, California, USA. This report contains summaries of 12 of the workshops, and brief abstracts of the remaining 5


Toward Finding Malicious Cyber Discussions in Social Media

AAAI Conferences

Security analysts gather essential information about cyber attacks, exploits, vulnerabilities, and victims by manually searching social media sites. This effort can be dramatically reduced using natural language machine learning techniques. Using a new English text corpus containing more than 250K discussions from Stack Exchange, Reddit, and Twitter on cyber and non-cyber topics, we demonstrate the ability to detect more than 90% of the cyber discussions with fewer than 1% false alarms. If an original searched document corpus includes only 5% cyber documents, then our processing provides an enriched corpus for analysts where 83% to 95% of the documents are on cyber topics. Good performance was obtained using term frequency (TF) – inverse document frequency (IDF) (TF–IDF) features and either logistic regression or linear support vector machine (SVM) classifiers. A classifier trained using prior historical data accurately detected 86% of emergent Heartbleed discussions and retrospective experiments demonstrate that classifier performance remains stable up to a year without retraining.


Familiarity Discrimination of Radar Pulses

Neural Information Processing Systems

H3C 3A7 CANADA 2Department of Cognitive and Neural Systems, Boston University Boston, MA 02215 USA Abstract The ARTMAP-FD neural network performs both identification (placing test patterns in classes encountered during training) and familiarity discrimination (judging whether a test pattern belongs to any of the classes encountered during training). The performance ofARTMAP-FD is tested on radar pulse data obtained in the field, and compared to that of the nearest-neighbor-based NEN algorithm and to a k 1 extension of NEN. 1 Introduction The recognition process involves both identification and familiarity discrimination. Consider, for example, a neural network designed to identify aircraft based on their radar reflections and trained on sample reflections from ten types of aircraft A . . . After training, the network should correctly classify radar reflections belonging to the familiar classes A . Familiarity discrimination is also referred to as "novelty detection," a "reject option," and "recognition in partially exposed environments."


Familiarity Discrimination of Radar Pulses

Neural Information Processing Systems

H3C 3A 7 CAN ADA 2Department of Cognitive and Neural Systems, Boston University Boston, MA 02215 USA Abstract The ARTMAP-FD neural network performs both identification (placing test patterns in classes encountered during training) and familiarity discrimination (judging whether a test pattern belongs to any of the classes encountered during training). The performance of ARTMAP-FD is tested on radar pulse data obtained in the field, and compared to that of the nearest-neighbor-based NEN algorithm and to a k 1 extension of NEN. 1 Introduction The recognition process involves both identification and familiarity discrimination. Consider, for example, a neural network designed to identify aircraft based on their radar reflections and trained on sample reflections from ten types of aircraft A... J. After training, the network should correctly classify radar reflections belonging to the familiar classes A... J, but it should also abstain from making a meaningless guess when presented with a radar reflection from an object belonging to a different, unfamiliar class. Familiarity discrimination is also referred to as "novelty detection," a "reject option," and "recognition in partially exposed environments."