462,337 research outputs found
Maximum-likelihood absorption tomography
Maximum-likelihood methods are applied to the problem of absorption
tomography. The reconstruction is done with the help of an iterative algorithm.
We show how the statistics of the illuminating beam can be incorporated into
the reconstruction. The proposed reconstruction method can be considered as a
useful alternative in the extreme cases where the standard ill-posed
direct-inversion methods fail.Comment: 7 pages, 5 figure
Approximate Profile Maximum Likelihood
We propose an efficient algorithm for approximate computation of the profile
maximum likelihood (PML), a variant of maximum likelihood maximizing the
probability of observing a sufficient statistic rather than the empirical
sample. The PML has appealing theoretical properties, but is difficult to
compute exactly. Inspired by observations gleaned from exactly solvable cases,
we look for an approximate PML solution, which, intuitively, clumps comparably
frequent symbols into one symbol. This amounts to lower-bounding a certain
matrix permanent by summing over a subgroup of the symmetric group rather than
the whole group during the computation. We extensively experiment with the
approximate solution, and find the empirical performance of our approach is
competitive and sometimes significantly better than state-of-the-art
performance for various estimation problems
Maximum Likelihood Associative Memories
Associative memories are structures that store data in such a way that it can
later be retrieved given only a part of its content -- a sort-of
error/erasure-resilience property. They are used in applications ranging from
caches and memory management in CPUs to database engines. In this work we study
associative memories built on the maximum likelihood principle. We derive
minimum residual error rates when the data stored comes from a uniform binary
source. Second, we determine the minimum amount of memory required to store the
same data. Finally, we bound the computational complexity for message
retrieval. We then compare these bounds with two existing associative memory
architectures: the celebrated Hopfield neural networks and a neural network
architecture introduced more recently by Gripon and Berrou
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