Dr. Matthew V. Mahoney
Matthew V. Mahoney, MSEE, MSCS, Ph.D. is Adjunct Instructor in
Computer
Science at Florida Tech and
chief scientist at
Ocarina Networks.
Matt’s current research interests are data compression and
the
social impact of artificial intelligence.
He helped develop
the
PAQ series of compressors, which are top ranked on many benchmarks,
using a new algorithm called context mixing. He also maintains the
large
text benchmark which he hopes will promote research in natural
language
modeling.
He authored
Computer Security: A Survey of Attacks and Defenses,
A Model for Recursively Self Improving Programs,
Text Compression as a Test for Artificial Intelligence,
Fast Text Compression with Neural Networks, and
Adaptive Weighing of Context Models for Lossless Data
Compression,
and coauthored
Learning Nonstationary Models of Normal Network Traffic for Detecting
Novel Attacks,
Fusion of Information Retrieval Engines (FIRE),
Modeling Multiple Time Series for Anomaly Detection, and
PHAD: Packet Header Anomaly Detection for Indentifying Hostile
Network
Traffic.
Matt earned his
A.S. at Cape Cod Community College in 1982.
He earned his BSEE in Computer Engineering at the University of
Massachusetts Dartmouth in 1984. He earned his
MSEE in Computer Engineering at Florida Tech in 1988 with the thesis
“Grid Logic:
Programmable Logic
that Implements Neural Networks.”
He earned his MSCS at Florida Tech in 1998 with the thesis
Complexity of
Adaptive Spatial
Indexing for Robust
Distributed Data.
He earned his Ph.D. in Computer Science at Florida Tech in 2003
with the dissertation topic
A Machine Learning
Approach to Detecting Attacks by Identifying
Anomalies in Network Traffic.