Dual Lower Bounds for Approximate Degree and Markov-Bernstein Inequalities
Mark Bun, Justin Thaler

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Abstract
The -approximate degree of a Boolean function is the minimum degree of a real polynomial that approximates to within in the norm. We prove several lower bounds on this important complexity measure by explicitly constructing solutions to the dual of an appropriate linear program. Our first result resolves the -approximate degree of the two-level AND-OR tree for any constant . We show that this quantity is , closing a line of incrementally larger lower bounds. The same lower bound was recently obtained independently by Sherstov using related techniques. Our second result gives an explicit dual polynomial that witnesses a tight lower bound for the approximate degree of any symmetric Boolean function, addressing a question of \v{S}palek. Our final contribution is to reprove…
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TopicsAdvanced Optimization Algorithms Research · Numerical Methods and Algorithms · Formal Methods in Verification
