The Value of Help Bits in Randomized and Average-Case Complexity
Salman Beigi, Omid Etesami, Amin Gohari

TL;DR
This paper investigates how limited help bits influence the complexity of solving multiple instances in randomized and average-case settings, extending previous results and exploring implications for complexity classes.
Contribution
It extends known results on help bits from deterministic to randomized and average-case complexity, introducing new bounds and the concept of $k$-membership comparability.
Findings
Help bits can reduce complexity in randomized settings under certain probability bounds.
Average-case analysis shows help bits with low entropy enable better-than-random solution probabilities.
For super-logarithmic $k$, black-box proofs cannot establish P/poly membership assuming $k$-membership comparability.
Abstract
"Help bits" are some limited trusted information about an instance or instances of a computational problem that may reduce the computational complexity of solving that instance or instances. In this paper, we study the value of help bits in the settings of randomized and average-case complexity. Amir, Beigel, and Gasarch (1990) show that for constant , if instances of a decision problem can be efficiently solved using less than bits of help, then the problem is in P/poly. We extend this result to the setting of randomized computation: We show that the decision problem is in P/poly if using help bits, instances of the problem can be efficiently solved with probability greater than . The same result holds if using less than help bits (where is the binary entropy function), we can efficiently solve fraction of…
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Taxonomy
TopicsMachine Learning and Algorithms · Logic, Reasoning, and Knowledge · Bayesian Modeling and Causal Inference
