Title
Absolute versus probabilistic classification in a logical setting
Abstract
Suppose we are given a set W of logical structures, or possible worlds, a set of logical formulas called possible data and a logical formula @f. We then consider the classification problem of determining in the limit and almost always correctly whether a possible world M satisfies @f, from a complete enumeration of the possible data that are true in M. One interpretation of almost always correctly is that the classification might be wrong on a set of possible worlds of measure 0, with respect to some natural probability distribution over the set of possible worlds. Another interpretation is that the classifier is only required to classify a set W^' of possible worlds of measure 1, without having to produce any claim in the limit on the truth of @f for the members of the complement of W^' in W. We compare these notions with absolute classification of W with respect to a formula that is almost always equivalent to @f in W, hence we investigate whether the set of possible worlds on which the classification is correct is definable. We mainly work with the probability distribution that corresponds to the standard measure on the Cantor space, but we also consider an alternative probability distribution proposed by Solomonoff and contrast it with the former. Finally, in the spirit of the kind of computations considered in Logic programming, we address the issue of computing almost correctly in the limit witnesses to leading existentially quantified variables in existential formulas.
Year
DOI
Venue
2008
10.1016/j.tcs.2008.02.026
Theor. Comput. Sci.
Keywords
Field
DocType
set w,alternative probability distribution,inductive inference,possible world,logical setting,logical formula,absolute classification,probabilistic classification,possible data,classification problem,limit witness,natural probability distribution,logical structure,probability distribution,possible worlds
Discrete mathematics,Enumeration,Probability distribution,Artificial intelligence,Almost surely,Logic programming,Probabilistic classification,Machine learning,Mathematics,Possible world,Computation
Journal
Volume
Issue
ISSN
397
1-3
Theoretical Computer Science
ISBN
Citations 
PageRank 
3-540-29242-X
1
0.35
References 
Authors
15
3
Name
Order
Citations
PageRank
Sanjay Jain11647177.87
Eric Martin26513.85
Frank Stephan331328.88