articleDec 1, 2004Closed access
Maximum Likelihood Estimation of Intrinsic Dimension
University of Michigan · University of California, Berkeley
Abstract
We propose a new method for estimating intrinsic dimension of a dataset derived by applying the principle of maximum likelihood to the distances between close neighbors. We derive the estimator by a Poisson process approximation, assess its bias and variance theo-retically and by simulations, and apply it to a number of simulated and real datasets. We also show it has the best overall performance compared with two other intrinsic dimension estimators. 1
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2Topics & keywords
Topics
Keywords
- Intrinsic dimension
- Dimension (graph theory)
- Estimator
- Variance (accounting)
- Poisson distribution
- Maximum likelihood
- Mathematics
- Statistics
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