3,287 research outputs found
High-dimensional Sparse Inverse Covariance Estimation using Greedy Methods
In this paper we consider the task of estimating the non-zero pattern of the
sparse inverse covariance matrix of a zero-mean Gaussian random vector from a
set of iid samples. Note that this is also equivalent to recovering the
underlying graph structure of a sparse Gaussian Markov Random Field (GMRF). We
present two novel greedy approaches to solving this problem. The first
estimates the non-zero covariates of the overall inverse covariance matrix
using a series of global forward and backward greedy steps. The second
estimates the neighborhood of each node in the graph separately, again using
greedy forward and backward steps, and combines the intermediate neighborhoods
to form an overall estimate. The principal contribution of this paper is a
rigorous analysis of the sparsistency, or consistency in recovering the
sparsity pattern of the inverse covariance matrix. Surprisingly, we show that
both the local and global greedy methods learn the full structure of the model
with high probability given just samples, which is a
\emph{significant} improvement over state of the art -regularized
Gaussian MLE (Graphical Lasso) that requires samples. Moreover,
the restricted eigenvalue and smoothness conditions imposed by our greedy
methods are much weaker than the strong irrepresentable conditions required by
the -regularization based methods. We corroborate our results with
extensive simulations and examples, comparing our local and global greedy
methods to the -regularized Gaussian MLE as well as the Neighborhood
Greedy method to that of nodewise -regularized linear regression
(Neighborhood Lasso).Comment: Accepted to AI STAT 2012 for Oral Presentatio
On Gorenstein Surfaces Dominated by P^2
In this paper we prove that a normal Gorenstein surface dominated by the
projective plane P^2 is isomorphic to a quotient P^2/G, where G is a finite
group of automorphisms of P^2 (except possibly for one surface V_8'). We can
completely classify all such quotients. Some natural conjectures when the
surface is not Gorenstein are also stated.Comment: Nagoya Mathematical Journal, to appea
Entropic Inequalities for a Class of Quantum Secret Sharing States
It is well-known that von Neumann entropy is nonmonotonic unlike Shannon
entropy (which is monotonically nondecreasing). Consequently, it is difficult
to relate the entropies of the subsystems of a given quantum state. In this
paper, we show that if we consider quantum secret sharing states arising from a
class of monotone span programs, then we can partially recover the monotonicity
of entropy for the so-called unauthorized sets. Furthermore, we can show for
these quantum states the entropy of the authorized sets is monotonically
nonincreasing.Comment: LaTex, 5 page
Non-ketonic hyperglycemia presenting with acute hemichorea and ballism
Received: October 8, 2017 Accepted: May 10, 2018 Published: August 17, 2018Financial support: Author declares that no financial assistance was taken from any source.Potential conflicts of interest: Author declares no conflicts of interest.Non-ketotic hyperglycemia is a complication of poorly controlled diabetes mellitus. Rarely, it can present like an acute neurological syndrome with unilateral choreiform and ballistic movements. Such a presentation usually raises the suspicion of a cerebrovascular event and prompts more workup. Moreover, the neuroimaging in this condition also suggests a variety of potential possibilities. Identification of this rare presentation of non-ketotic hyperglycemia helps with the appropriate management and avoid unnecessary investigations. In this case report, we report the case of an elderly woman who presented with hemichorea-ballism due to non-ketotic hyperglycemia and discuss the literature on this presentation. We also highlighted the differential diagnosis based on neuroimaging.Pradeep C. Bollu MD (1) (Department of Neurology, University of Missouri, Columbia, Missouri)Includes bibliographical reference
A Tale of Two Data-Intensive Paradigms: Applications, Abstractions, and Architectures
Scientific problems that depend on processing large amounts of data require
overcoming challenges in multiple areas: managing large-scale data
distribution, co-placement and scheduling of data with compute resources, and
storing and transferring large volumes of data. We analyze the ecosystems of
the two prominent paradigms for data-intensive applications, hereafter referred
to as the high-performance computing and the Apache-Hadoop paradigm. We propose
a basis, common terminology and functional factors upon which to analyze the
two approaches of both paradigms. We discuss the concept of "Big Data Ogres"
and their facets as means of understanding and characterizing the most common
application workloads found across the two paradigms. We then discuss the
salient features of the two paradigms, and compare and contrast the two
approaches. Specifically, we examine common implementation/approaches of these
paradigms, shed light upon the reasons for their current "architecture" and
discuss some typical workloads that utilize them. In spite of the significant
software distinctions, we believe there is architectural similarity. We discuss
the potential integration of different implementations, across the different
levels and components. Our comparison progresses from a fully qualitative
examination of the two paradigms, to a semi-quantitative methodology. We use a
simple and broadly used Ogre (K-means clustering), characterize its performance
on a range of representative platforms, covering several implementations from
both paradigms. Our experiments provide an insight into the relative strengths
of the two paradigms. We propose that the set of Ogres will serve as a
benchmark to evaluate the two paradigms along different dimensions.Comment: 8 pages, 2 figure
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