Degree- Chow Parameters Robustly Determine Degree- PTFs (and
Algorithmic Applications)
The degree- Chow parameters of a Boolean function are its degree at most Fourier coefficients. It is well-known that degree- Chow parameters uniquely characterize degree- polynomial threshold functions (PTFs) within the space of all bounded functions. In this paper, we prove a robust version of this theorem: For any Boolean degree- PTF and any bounded function, if the degree- Chow parameters of are close to the degree- Chow parameters of in -norm, then is close to in -distance. Notably, our bound relating the two distances is completely independent of the dimension . That is, we show that Boolean degree- PTFs are {\em robustly identifiable} from their degree- Chow parameters. Results of this form had been shown for the case~\cite{OS11:chow, DeDFS14}, but no non-trivial bound was previously known for . Our robust identifiability result gives the following algorithmic applications: First, we show that Boolean degree- PTFs can be efficiently approximately reconstructed from approximations to their degree- Chow parameters. This immediately implies that degree- PTFs are efficiently learnable in the uniform distribution -RFA model~\cite{BenDavidDichterman:98}. As a byproduct of our approach, we also obtain the first low integer-weight approximations of degree- PTFs, for . As our second application, our robust identifiability result gives the first efficient algorithm, with dimension-independent error guarantees, for malicious learning of Boolean degree- PTFs under the uniform distribution.
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