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Category MARKETS 2012
Deadline: April 20, 2012 | Date: July 01, 2012
Venue/Country: Edinburgh, U.K.
Updated: 2012-03-20 09:21:16 (GMT+9)
Important Dates:Deadline for submissions: 20 April 2012Notification of Acceptance: 18 May 2012Organisers:Amos Storkey (a.storkey
ed.ac.uk)Jacob Abernethy (jaber
seas.upenn.edu)Jenn Wortman Vaughan (jenn
cs.ucla.edu)Overview:Many of society’s greatest accomplishments are in large part due tothe facility of markets. Markets and other allocation mechanisms havebecome necessary tools of the modern age, and they have been key tofacilitating the development of complex structures, advancedengineering, and a range of other improvements to our collectivecapabilities. Much work in economics has been done to demonstrate thatmarkets can, in aggregate, function very well even when the individualparticipants are noisy, irrational or myopic.In terms of aims and benefits, the design of machine learningtechniques has much in common with the development of marketmechanisms: information aggregation, maximal efficiency, scalability,and, more recently, decentralization. Current machine learningalgorithms are often single goal methods, built from simplehomogeneous units by one person or individual groups. Perhaps lookingto the organisations of economies may help in moving beyond thecurrent centralised design of most machine learning methods. Allowingagents with different opinions, approaches or methods to enter andleave the market, to interact, and to adapt to changes can have manybenefits. For example it may enable us to develop methods that providecontinuous improvement on complex problems, reuse results by improvingon previous outcomes rather than building bigger models from scratch,and adapting to changes.There are many relationships between machine learning methods,Bayesian decision theory, risk minimisation, economics, statisticalphysics and information theory that have been known for some time.There are also many open questions regarding the full nature andimpact of these connections. This workshop will explore theseconnections from many different directions.Various Topics:More detailed descriptions of each of these topics can be found on thewebsite.1) Prediction markets as a tool for learning and aggregation.2) Learning in problems of mechanism design.3) Prediction and learning in ad auctions.4) Online trading, portfolio selection, etc. in financial engineering.5) Relating Market Mechanisms and Machine Learning Methods.6) Transactional Communication in Multi-agent Systems.Feel free to email the organizers regarding additional topics.Submission Instructions:We are soliciting contributions for talks and for posters. Submissionsshould take the form of a abstract limited to 4 pages plus references.At least one page of this should be dedicated to describing therelationship of this work to other work in both Economics/Finance andin this area of Machine Learning.In addition if you wish to be considered for a talk, you should submita further description of what the motivation and content of your talkwill be (in one page or less).Please see the website for full submission instructions.Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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