Improved Monotonicity Testers via Hypercube Embeddings
Mark Braverman, Subhash Khot, Guy Kindler, Dor Minzer

TL;DR
This paper introduces improved, nearly optimal monotonicity testers for Boolean hypercubes and hypergrids using measure embeddings, significantly reducing query complexity compared to previous methods.
Contribution
It develops a novel approach using measure embeddings to create nearly optimal monotonicity testers for product domains, extending and improving prior results.
Findings
Query complexity for p-biased hypercube is O(\u221a{n}/\u03b5^2)
Query complexity for hypergrid [m]^n is O((()/)
Results are optimal up to poly-logarithmic factors
Abstract
We show improved monotonicity testers for the Boolean hypercube under the -biased measure, as well as over the hypergrid . Our results are: 1. For any , for the -biased hypercube we show a non-adaptive tester that makes queries, accepts monotone functions with probability and rejects functions that are -far from monotone with probability at least . 2. For all , we show an query monotonicity tester over . We also establish corresponding directed isoperimetric inequalities in these domains. Previously, the best known tester due to Black, Chakrabarty and Seshadhri had query complexity. Our results are optimal up to poly-logarithmic factors and the dependency on . Our proof uses a notion of monotone embeddings of…
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Videos
Improved Monotonicity Testers via Hypercube Embeddings· youtube
Taxonomy
TopicsMachine Learning and Algorithms · Complexity and Algorithms in Graphs · Adversarial Robustness in Machine Learning
