Newton Howard
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- Comment: About 400 citations per GScholar. FoCuS contribs; talk to me! 23:17, 3 January 2016 (UTC)
- Comment: Previous draft has been deleted as abandoned. Please add references and resubmit. Robert McClenon (talk) 21:00, 26 December 2015 (UTC)
- Comment: On further review, the existing draft in draft space, which is mostly an autobiography, has been abandoned for more than six months. The author of this draft is advised to add proper references, because this draft is unreferenced, and otherwise to wait until the existing draft is speedy-deleted as abandoned. Robert McClenon (talk) 18:15, 26 December 2015 (UTC)
- Comment: The author may have accidentally created two copies of this draft. The one in draft space is a good start but is unreferenced and should be the basis for more work (entry of references). I suggest that this one be deleted or blanked so that edits do not get split between the two drafts. Robert McClenon (talk) 18:12, 26 December 2015 (UTC)
{AFC submission|d|dup|Newton Howard|u=Bbrink8|ns=2|decliner=Robert McClenon|declinets=20151226181205|ts=20151226174845}}
Prof. Newton Howard is a brain and cognitive scientist and former Director of the MIT Mind Machine Project[1][2] at the Massachusetts Institute of Technology (MIT). He is a Professor of Computational Neuroscience and Functional Neurosurgery[3] at the University of Oxford, where he directs the Oxford Computational Neuroscience Laboratory[4]. He is also the Director of the Synthetic Intelligence Lab at MIT[5], the founder of the Center for Advanced Defense Studies[6] and the Chairman of the Brain Sciences Foundation[7]. Professor Howard is also a Senior Fellow at the John Radcliffe Hospital at Oxford, a Senior Scientist at INSERM in Paris and a P.A.H. at the CHU Hospital in Martinique.
His research areas include Cognition, Memory, Trauma, Machine Learning, Comprehensive Brain Modeling, Natural Language Processing, Nanotech, Medical Devices and Artificial Intelligence.
Education and Career
Dr. Howard earned his B.A. from Concordia University and an M.A. in Technology from Eastern Michigan University. He went on to study at MIT and at the University of Oxford where, as a graduate member of the Faculty of Mathematical Sciences, he proposed the Theory of Intention Awareness (IA)[8]. He also received a Doctorate in Cognitive Informatics and Mathematics from the University of Paris-Sorbonne, where he was also awarded a Habilitation a Diriger des Recherches for his work on the Physics of Cognition (PoC)[9].
Professor Howard is an author and national security advisor[10][11] to several U.S. Government organizations[12] and his work has contributed to more than 30 U.S. patents and over 90 publications. In 2009, he founded the Brain Sciences Foundation (BSF)[7], a nonprofit 501(c)3 organization with the goal of improving the quality of life for those suffering from neurological disorders.
Research
Prof. Howard is known for his Theory of Intention Awareness (IA),[13] which provides a possible model for explaining volition in human intelligence, recursively throughout all layers of biological organization. Prof. Howard next developed the Mood State Indicator (MSI)[14] a machine learning system capable of predicting emotional states by modeling the mental processes involved in human speech and writing. The Language Axiological Input/Output system (LXIO)[14] was built upon this MSI framework and found to be capable of detecting both sentiment and cognitive states by parsing sentences into words, which are then processed through time orientation, contextual-prediction and subsequent modules, computing each word's contextual and grammatical function with a Mind Default Axiology. The key significance of LXIO was its ability to incorporate conscious thought and bodily expression (linguistic or otherwise) into a uniform code schema[14].
In 2012, Prof. Howard published the Fundamental Code Unit (FCU)[15] theory, which uses unitary mathematics (ON/OFF +/-) to correlate networks of neurophysiological processes to higher order function. In 2013, he proposed the Brain Code (BC) theory, a methodology for using the FCU to map entire circuits of neurological activity to behavior and response, effectively decoding the language of the brain[16].
In 2014, Prof. Howard discovered a functional endogenous optical network within the brain, mediated by neuropsin (OPN5). This self-regulating cycle of photon-mediated events in the neocortex involves sequential interactions among 3 mitochondrial sources of endogenously-generated photons during periods of increased neural spiking activity: (a) near-UV photons (~380 nm), a free radical reaction byproduct; (b) blue photons (~470 nm) emitted by NAD(P)H upon absorption of near-UV photons; and (c) green photons (~530 nm) generated by NAD(P)H oxidases, upon NAD(P)H-generated blue photon absorption. The bistable nature of this nanoscale quantum process provides evidence that an on/off (UNARY +/-) coding system exists at the most fundamental level of brain operation and provides a solid neurophysiological basis for Dr. Howard's FCU[15] and BC theses to build from.
Selected Works
- Hussain, A., Cambria, E., Schuller, B., Howard, N. (2014). Affective Neural Networks and Cognitive Learning Systems for Big Data Analysis, Neural Networks, Special Issue, 58, 1-3.
- Cambria, E., Howard, N., Song, Y. & Wang, H. (2014). Semantic Multidimensional Scaling for Open Domain Sentiment Analysis. IEEE Intelligent Systems, 29 March/April.
- Poria, S., Agarwal, Basant., Gelbukh, A., Hussain, A., Howard, N. (2014) Dependency-Based Semantic Parsing for Concept-Level Text Analysis. Computational Linguistics and Intelligent Text Processing. Lecture Notes in Computer Science, 8403, 113-127
- Howard, N. (2013). The Twin Hypotheses: Brain Code and the Fundamental Code Unit: Towards Understanding the Computational Primitive Elements of Cortical Computing. Lecture Notes in Artificial Intelligence, MICAI, November 24-30, 2013, Mexico City, Mexico.
- Howard, N., Bergmann, J. & Stein, J. (2013). Combined Modality of the Brain Code Approach for Early Detection and the Long-term Monitoring of Neurodegenerative Processes. Frontiers Special Issue INCF Course Imaging the Brain at Different Scales.
- Howard, N. (2013). Approach Towards a Natural Language Analysis for Diagnosing Mood Disorders and Comorbid Conditions. Lecture Notes in Computer Science, MICAI, November 24-30, 2013, Mexico City, Mexico.
- Howard, N. (2013). Toward Understanding Analogical Mapping and Ideological Cataloguing in the Brain. Research Challenges in Information Science Series Conference (RCIS) May 29-31, 2013, Paris, France.
- Howard, N. (2012). Brain Language: The Fundamental Code Unit. The Brain Sciences Journal, 1(1), 4-45.
- Howard, N. (2012). Energy Paradox of the Brain. The Brain Sciences Journal, 1(1), 46-61.
- Howard, N., Lieberman, H. (2012). Brain Space: Automated Brain Understanding and Machine Constructed Analytics in Neuroscience. Brain Sciences Journal, 1(1), 85-97.
- Howard, N., Guidere, M. (2012). LXIO The Mood Detection Robopsych. The Brain Sciences Journal, 1(1), 98-109.
- Howard, N. & Bergmann, J. (2012). Combining Computational Neuroscience and Body Sensor Networks to Investigate Alzheimer’s Disease. Journal of Functional Neurology, Rehabilitation and Ergonomics, 2(1), 29-38
- Howard, N., Kanareykin, S. (2012) Transcranial Ultrasound Application Methods: Low-frequency ultrasound as a treatment for brain dysfunction. The Brain Sciences Journal, 1(1), 110-124.
- Howard, N. (1999) The Logic of Uncertainty and Situational Understanding. Published by Center for Advanced Defense Studies (CADS)/Institute for the Mathematical Complexity & Cognition (MC) Centre de Recherche en Informatique, Université Paris Sorbonne
- Howard, N., Argamon, S. (Eds.) (2009). Computational Methods For Counterterrorism. Berlin: Springer-Verlag.
Patents (US)
- S. Patent: US 7058355 B2 - Propagation of a wireless network through commercial outlets
- S. Patent: US 7177643 B2 - Wireless network for routing a signal without using a tower
- S. Patent: US 8380902 B2 - Situation Understanding and Intent-Based Analysis for Dynamic Information Exchange
- S. Patent: US 8407281 B2 - Intent-Based Automated Conflict Prediction and Notification System
- S. Patent Application: 13/747448 - System, Method, and Applications of Using the Fundamental Code Unit and Brain Language
- S. Patent Application: 12/880042 - Medical Co-Processor for signaling pattern decoding and manipulation of cellular structures via direct interface
- S. Patent Application: 13/083352 - Method for Cognitive Computing
- S. Patent Application: 60/223813 - Wireless Communications System and Method
- S. Patent Application: 60/221231 - System and Method for Command, Control and Communication for Personnel and Weaponry
- S. Patent Application: 14/336679 - Intent-Based Ontology for Grid Computing Using Autonomous Mobile Agents
- S. Patent Application: 60/907520 - The Glass Office
- S. Patent Application: 60/907523 - XML Threats: Intent-aware Intrusion Detection System or Web Services Applications
- S. Patent Application: 60/907522 - Intent-centric Paradigms Cognitive Computing and Cognitive Engines
Patents (International)
- International Patent Application: WO/2011/127424 A1 (PCT) - Method for Cognitive Computing
- International Patent Application: WO/2002/019290 A3 (PCT) - Intention-Based Automated Conflict Prediction and Notification System
- International Patent Application: WO/2002/013415 A3 (PCT) - Wireless Network
- International Patent Application: WO/2008/070101 A2 (PCT) - Situation Understanding and Intent-Based Analysis for Dynamic Information Sharing
External Links
- Oxford Computational Neuroscience Lab
- MIT Mind Machine Project
- MIT Synthetic Intelligence Laboratory
- Brain Sciences Foundation
- Center for Advanced Defense Studies
References
- ^ "MIT Mind Machine Project". Mind Machine Project. Massachusetts Institute of Technology.
- ^ Chandler, David (December 7, 2009). "Rethinking artificial intelligence". MIT News. Massachusetts Institute of Technology.
- ^ "Nuffield Department of Surgical Sciences". Nuffield Department of Surgical Sciences. University of Oxford.
- ^ "Oxford Computational Neuroscience Laboratory". Oxford Computational Neuroscience Laboratory. University of Oxford.
- ^ "Synthetic Intelligence Lab". Synthetic Intelligence Lab. Massachusetts Institute of Technology.
- ^ "Center for Advanced Defense Studies". Center for Advanced Defense Studies. Center for Advanced Defense Studies.
- ^ a b "Brain Sciences Foundation". Brain Sciences Foundation. Brain Sciences Foundation.
- ^ Newton Howard, “Theory of Intention Awareness in Tactical Military Intelligence: Reducing Uncertainty by Understanding the Cognitive Architecture of Intentions", Author House First Books Library, Bloomington, Indiana. 2002.
- ^ Howard, Newton (1999). "The Logic of Uncertainty and Situational Understanding". Center for Advanced Defense Studies (CADS)/Institute for the Mathematical Complexity & Cognition (MC) Centre de Recherche en Informatique, Université Paris Sorbonne.
- ^ JMO, CWID (2007). "CWID - Coalition Warrior Interoperability Demonstration" (PDF). CWID JMO.
- ^ NATO, MIP (2007). "Joint C3 Information Exchange Data Model Overview" (PDF). MIP-NATO Management Board.
- ^ Howard, Newton (2013). "Development of a Diplomatic, Information, Military, Health, and Economic Effects Modeling System" (PDF). Massachusetts Institute of Technology.
- ^ Howard, Newton (2002). Theory of Intention Awareness in Tactical Military Intelligence: Reducing Uncertainty by Understanding the Cognitive Architecture of Intentions. Bloomington, IN: Author House First Books Library.
- ^ a b c Howard, Newton; Guidere, Mathieu (January 2012). "LXIO: The Mood Detection Robopsych". Brain Sciences Journal.
- ^ a b Howard, Newton (2012). "Brain Language: The Fundamental Code Unit" (PDF). Brain Sciences Journal. Brain Sciences Foundation.
- ^ Howard, Newton (2015). The Brain Language. London, UK: Cambridge Scientific Publishing. ISBN 978-1-908106-50-6.