NIPS 2017 Workshop: Cognitively Informed Artificial Intelligence

December 9, 2017 in Long Beach, CA
Workshop website: https://sites.google.com/view/ciai2017/home 
<https://sites.google.com/view/ciai2017/home>
Conference website: https://nips.cc/ <https://nips.cc/>
Important dates

October 20, 2017: Deadline for contributed paper submissions

November 3, 2017: Notification of contributed paper acceptances

November 10, 2017: Final program announced

December 9, 2017: Workshop (Long Beach, CA)

Overview

The goal of this workshop is to bring together cognitive scientists, 
neuroscientists, and AI researchers to discuss opportunities for improving 
machine learning, by leveraging our scientific understanding of human 
perception and cognition. There is a history of making these connections: 
artificial neural networks were originally motivated by the massively parallel, 
deep architecture of the brain; considerations of biological plausibility have 
driven the development of learning procedures; and architectures for computer 
vision draw parallels to the connectivity and physiology of mammalian visual 
cortex. However, beyond these celebrated examples, cognitive science and 
neuroscience has fallen short of its potential to influence the next generation 
of AI systems. Areas such as memory, attention, and development have rich 
theoretical and experimental histories, yet these concepts, as applied to AI 
systems so far, only bear a superficial resemblance to their biological 
counterparts.

The premise of this workshop is that there are valuable data and models from 
cognitive science that can inform the development of intelligent adaptive 
machines, and can endow learning architectures with the strength and 
flexibility of the human cognitive architecture. The structures and mechanisms 
of the mind and brain can provide the sort of strong inductive bias needed for 
machine-learning systems to attain human-like performance. We conjecture that 
this inductive bias will become more important as researchers move from 
domain-specific tasks such as object and speech recognition toward tackling 
general intelligence and the human-like ability to dynamically reconfigure 
cognition in service of changing goals. For ML researchers, the workshop will 
provide access to a wealth of data and concepts situated in the context of 
contemporary ML. For cognitive scientists, the workshop will suggest research 
questions that are of critical interest to ML researchers.

The workshop will focus on three interconnected topics of particular relevance 
to ML:

(1) Learning and development. Cognitive capabilities expressed early in a 
child’s development are likely to be crucial for bootstrapping adult learning 
and intelligence. Intuitive physics and intuitive psychology allow the 
developing organism to build an understanding of the world and of other agents. 
Additionally, children and adults often demonstrate “learning-to-learn,” where 
previous concepts and skills form a compositional basis for learning new 
concepts and skills.

(2) Memory. Human memory operates on multiple time scales, from memories that 
literally persist for the blink of an eye to those that persist for a lifetime. 
These different forms of memory serve different computational purposes. 
Although forgetting is typically thought of as a disadvantage, the ability to 
selectively forget/override irrelevant knowledge in nonstationary environments 
is highly desirable.

(3) Attention and Decision Making. These refer to relatively high-level 
cognitive functions that allow task demands to purposefully control an agent’s 
external environment and sensory data stream, dynamically reconfigure internal 
representation and architecture, and devise action plans that strategically 
trade off multiple, oft-conflicting behavioral objectives.

Our long-term goals are:

to incorporate insights from human cognition to suggest novel and improved AI 
architectures;
to facilitate the development of ML methods that can better predict human 
behavior; and
to support the development of a field of ‘cognitive computing’ that is more 
than a marketing slogan一a field that improves on both natural and artificial 
cognition by synergistically advancing each and integrating their strengths in 
complementary manners.
Organizers

Mike Mozer 
<http://www.google.com/url?q=http%3A%2F%2Fwww.cs.colorado.edu%2F%7Emozer%2Findex.php&sa=D&sntz=1&usg=AFQjCNFOBBJfa83eCXiQePvoWxONbegHDA>,
 U. Colorado Boulder

Brenden Lake 
<http://www.google.com/url?q=http%3A%2F%2Fcims.nyu.edu%2F%7Ebrenden%2F&sa=D&sntz=1&usg=AFQjCNHShcu81Ez-rjFIRQJnN06A7VdX_Q>,
 NYU

Angela Yu 
<http://www.google.com/url?q=http%3A%2F%2Fwww.cogsci.ucsd.edu%2F%7Eajyu%2F&sa=D&sntz=1&usg=AFQjCNFS1Nq9myPbw5EPr67-6WfdG2KOTQ>,
 UCSD

Invited speakers (confirmed)

Peter Battaglia <https://scholar.google.com/citations?user=nQ7Ij30AAAAJ&hl=en>, 
Deep Mind

Yoshua Bengio, 
<http://www.google.com/url?q=http%3A%2F%2Fwww.iro.umontreal.ca%2F%7Ebengioy%2Fyoshua_en%2F&sa=D&sntz=1&usg=AFQjCNEMJ2IkEYm0ZsMdm2uJ6PBBoBbfIA>
 U. Montreal

Alison Gopnik 
<http://www.google.com/url?q=http%3A%2F%2Fpsychology.berkeley.edu%2Fpeople%2Falison-gopnik&sa=D&sntz=1&usg=AFQjCNEGr8NCQx2e6l4mySSR29aImo0kMg>,
 UC Berkeley

Tom Griffiths 
<http://www.google.com/url?q=http%3A%2F%2Fcocosci.berkeley.edu%2Ftom%2Findex.php&sa=D&sntz=1&usg=AFQjCNGTHVfbV_LAeGIYXsVvhwUZ4ndQSw>,
 UC Berkeley

Marc Howard 
<https://www.google.com/url?q=https%3A%2F%2Fwww.bu.edu%2Fpsych%2Ffaculty%2Fmhoward%2F&sa=D&sntz=1&usg=AFQjCNHQoMSRmq9QNe5nyMFMAdlh9Bpj_g>,
 Boston University

Robert Jacobs 
<http://www.google.com/url?q=http%3A%2F%2Fwww.sas.rochester.edu%2Fbcs%2Fpeople%2Ffaculty%2Fjacobs_robert%2Findex.html&sa=D&sntz=1&usg=AFQjCNGxHTA02rPmpbNXPMYHhatKPCkZUw>,
 U. Rochester

Gary Marcus 
<http://www.google.com/url?q=http%3A%2F%2Fwww.psych.nyu.edu%2Fgary%2F&sa=D&sntz=1&usg=AFQjCNGOLAYUjZAYi1eE9Jh89Zmd0Yijvw>,
 NYU

Aude Oliva 
<http://www.google.com/url?q=http%3A%2F%2Fcvcl.mit.edu%2FAude.htm&sa=D&sntz=1&usg=AFQjCNEO5_RfUL17KA4oR9ljaDQ8ynWv2g>,
 MIT

... more to come

Contributing to the workshop

The goal of this workshop is to bring together cognitive scientists, 
neuroscientists, and AI researchers to discuss opportunities for improving 
machine learning, by leveraging our scientific understanding of human 
perception and cognition. We have reserved time for contributed papers and 
posters. We welcome submissions that present at least preliminary results. We 
are specifically aiming to identify work showing that cognitively-informed 
models and learning systems outperform standard AI/ML approaches.

We will select based on (1) the depth to which cognitive principles, theories, 
and models inform the system, and (2) the performance advantage of the 
cognitively informed system. We encourage submissions making contact with any 
area of cognition―attention, perception, development, memory, learning from 
experience, judgment and decision making―which elucidate the computational 
principles or mechanisms that allow people to outperform machines, and which 
suggest novel approaches to solving AI challenges such as: flexible and 
generalizable learning, task-dependent information acquisition and processing, 
avoidance of catastrophic forgetting, and operating subject to energy 
(computational efficiency) constraints.

We prefer brief submissions of up to four pages, excluding references, 
formatted in NIPS style. No need to anonymize submissions. If you have a longer 
manuscript already submitted and under review, you may submit the manuscript 
instead. Accepted submissions will be posted on the workshop page if the 
authors wish, but otherwise the submissions will be used only for reviewing 
contributions.

Submit your contribution (in PDF format) to cognitivelyinforme...@gmail.com 
<mailto:cognitivelyinforme...@gmail.com>. Feel free to contact the organizers 
if you have questions about the relevance of your research for the workshop.



NOTE: The NIPS 2017 conference is currently sold out including the main 
conference and workshops (waitlist available). A limited number of workshop 
registrations are reserved for workshop speakers but insufficient to cover all 
interested participants. We apologize for this unforeseen complication.


------------------------------------
Angela Yu
Associate Professor
Cognitive Science, UCSD
858-822-3317
www.cogsci.ucsd.edu/~ajyu <http://www.cogsci.ucsd.edu/~ajyu>
-------------------------------------




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