By David L. Dowe (auth.), David L. Dowe (eds.)
Algorithmic likelihood and pals: lawsuits of the Ray Solomonoff eighty fifth memorial convention is a suite of unique paintings and surveys. The Solomonoff eighty fifth memorial convention used to be held at Monash University's Clayton campus in Melbourne, Australia as a tribute to pioneer, Ray Solomonoff (1926-2009), honouring his a variety of pioneering works - so much relatively, his innovative perception within the early Nineteen Sixties that the universality of common Turing Machines (UTMs) will be used for common Bayesian prediction and synthetic intelligence (machine learning). This paintings maintains to more and more impression and under-pin information, econometrics, computing device studying, facts mining, inductive inference, seek algorithms, facts compression, theories of (general) intelligence and philosophy of technology - and functions of those components. Ray not just estimated this because the route to actual synthetic intelligence, but in addition, nonetheless within the Sixties, expected phases of growth in laptop intelligence which might eventually result in machines surpassing human intelligence. Ray warned of the necessity to expect and talk about the capability effects - and hazards - quicker instead of later. almost certainly foremostly, Ray Solomonoff was once a very good, chuffed, frugal and adventurous person of light get to the bottom of who controlled to fund himself whereas electing to behavior rather a lot of his paradigm-changing study open air of the college process. the quantity comprises 35 papers relating the abovementioned themes in tribute to Ray Solomonoff and his legacy.
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Additional resources for Algorithmic Probability and Friends. Bayesian Prediction and Artificial Intelligence: Papers from the Ray Solomonoff 85th Memorial Conference, Melbourne, VIC, Australia, November 30 – December 2, 2011
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