7
Total Mentions
7
Documents
917
Connected Entities
Organization referenced in documents
EFTA00624128_sub_006 - EFTA00624128_555
parameters and relationships guiding what the system pays attention to, at what points in time. This is a term inclusive of Importance Updating and Hebbian Learning. • Attentional Currency: Short Term Importance and Long Term Importance values are implemented in terms of two different types of artificial money,
EFTA00623759_sub_001 - EFTA00623759_100
1 The Hopfield neural net model 256 13.4.2 Knowledge Representation via Cell Assemblies 257 13.5 Neural Foundations of Learning 258 13.5.1 Hebbian Learning 258 13.5.2 Virtual Synapses and Hebbian Learning Between Assemblies 258 13.5.3 Neural Darwinism 259 13.6 Glocal Memory 260 13.6.1 A Semi-Fo
EFTA00623759_sub_003 - EFTA00623759_300
e our points about glocal knowledge representation in neural net type systems without discussing some aspects of learning in these systems. 13.5.1 Hebbian Learning The most common and plausible assumption about learning in the brain is that synaptic connec- tions between neurons are adapted via some variant of
EFTA00623759_sub_004 - EFTA00623759_369
parameters and relationships guiding what the system pays attention to, at what points in time. This is a term inclusive of Importance Updating and Hebbian Learning. • Attentional Currency: Short Term Importance and Long Term Importance values are implemented in terms of two different types of artificial money,
HOUSE_OVERSIGHT_012899_sub_001 - HOUSE_OVERSIGHT_012998
3.4.2 Knowledge Representation via Cell Assemblies .................2.05- 257 13.5 Neural Foundations of Learning ..........0 0.000 ee eee 258 13.5.1 Hebbian Learning............ 0.0.00 eee ete eee 258 13.5.2 Virtual Synapses and Hebbian Learning Between Assemblies .......... 258 35:38 Netital DArwitiiSitt +2; case
HOUSE_OVERSIGHT_012899_sub_003 - HOUSE_OVERSIGHT_013198
ake our points about glocal knowledge representation in neural net type systems without discussing some aspects of learning in these systems. 13.5.1 Hebbian Learning The most common and plausible assumption about learning in the brain is that synaptic connec- tions between neurons are adapted via some variant of
HOUSE_OVERSIGHT_012899_sub_004 - HOUSE_OVERSIGHT_013267
e parameters and relationships guiding what the system pays attention to, at what points in time. This is a term inclusive of Importance Updating and Hebbian Learning. Attentional Currency: Short Term Importance and Long Term Importance values are implemented in terms of two different types of artificial money, ST

Stephen Hawking
PersonBritish theoretical physicist, cosmologist and author (1942–2018)

Marc Rich
PersonAmerican commodities trader (1934–2013)
OpenCog
OrganizationArtificial intelligence research project
CogPrime
OrganizationOrganization referenced in documents

George W. Bush
PersonPresident of the United States from 2001 to 2009
Bill Hibbard
PersonAmerican computer scientist

Vladimir Putin
Person2nd and 4th President of Russia (2000-2008, 2012-present), 7th and 11th Prime Minister of Russia (1999-2000, 2008-2012), Director of the Federal Security Service (1998-1999) and Deputy Mayor of Saint Petersburg (1994-1996)

Joel Pitt
PersonPerson referenced in documents
Stephan Vladimir Bugaj
PersonPerson referenced in documents

Michael Douglas
PersonAmerican retired actor, producer and activist (born 1944)
VariableAtoms
OrganizationOrganization referenced in documents

Joscha Bach
PersonCognitive scientist

Lawrence Krauss
PersonAmerican particle physicist and cosmologist
ConceptNodes
OrganizationOrganization referenced in documents
Self-Modification
OrganizationOrganization referenced in documents
Allen Interval Algebra
OrganizationOrganization referenced in documents

Shane Legg
PersonMachine learning researcher

Marvin Minsky
PersonAmerican cognitive scientist (1927-2016)

Predrag Janicic
PersonPerson referenced in documents
the Webmind AI Engine
OrganizationOrganization referenced in documents