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(Neural Computation. 2007;19:2871-2880.)
© 2007 The MIT Press


Note

On the Consistency of Bayesian Function Approximation Using Step Functions

Heng Lian

Heng_Lian{at}brown.edu Division of Applied Mathematics, Brown University, Providence, RI 02912, U.S.A.

We consider the problem of estimating a step function with an unknown number of jumps under noisy observations on a grid. Under mild assumptions, the Bayesian approach is shown to produce a consistent estimate, even when the underlying true function is not piecewise constant. A simple prior is constructed to illustrate our assumptions.







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Copyright © 2007 by The MIT Press.