George V. Cybenko is the Dorothy and Walter Gramm Professor of
Engineering at
Dartmouth and a fellow of the
IEEE and
SIAM.[1]
Education
Cybenko obtained his BA in mathematics from the
University of Toronto in 1974 and received his PhD from
Princeton in applied mathematics of electrical and computer engineering in 1978 under
Bede Liu.[2]
Work
Cybenko served as an advisor for the
Defense Science Board and the Air Force Scientific Advisory Board, among several other government panels. He was the founding editor-in-chief of Security & Privacy and also of Computing in Science & Engineering, both IEEE technical magazines.
His current research interests are distributed information, control systems, and signal processing, with a focus on applications to security and infrastructure protection.
He is known for proving the
universal approximation theorem for
artificial neural networks with
sigmoidactivation functions.[3]
Awards
SIAM Fellow (2020), "for contributions to theory and algorithms in signal processing, artificial neural networks, and distributed computing systems."[4]
SPIE Eric A. Lehrfeld Award (2016), for "work in cyber security including developing algorithms, analysis techniques, and tools to improve the state of the art in many areas, including computational behavior analysis, adversarial deception detection and dynamics, disclosure risk, and covert channels, and for his efforts in support of the SPIE Defense + Commercial Sensing symposium".[5]
IEEE Fellow (1998), "for contributions to algorithms and theory of artificial neural networks in signal processing, and to theory and systems software for distributed and
parallel computing."[7]
^"IEEE Fellows Directory". IEEE — The world's largest technical professional organization dedicated to advancing technology for the benefit of humanity.
IEEE. Retrieved 19 November 2022.