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arxiv: 1211.3038 · v4 · pith:JA3N2T7Xnew · submitted 2012-11-13 · 📊 stat.ML

Gradient density estimation in arbitrary finite dimensions using the method of stationary phase

classification 📊 stat.ML
keywords densityfunctionapproachestimationgradientmathbbphaserandom
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We prove that the density function of the gradient of a sufficiently smooth function $S : \Omega \subset \mathbb{R}^d \rightarrow \mathbb{R}$, obtained via a random variable transformation of a uniformly distributed random variable, is increasingly closely approximated by the normalized power spectrum of $\phi=\exp\left(\frac{iS}{\tau}\right)$ as the free parameter $\tau \rightarrow 0$. The result is shown using the stationary phase approximation and standard integration techniques and requires proper ordering of limits. We highlight a relationship with the well-known characteristic function approach to density estimation, and detail why our result is distinct from this approach.

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