22,196 research outputs found
Learning Probability Measures with respect to Optimal Transport Metrics
We study the problem of estimating, in the sense of optimal transport
metrics, a measure which is assumed supported on a manifold embedded in a
Hilbert space. By establishing a precise connection between optimal transport
metrics, optimal quantization, and learning theory, we derive new probabilistic
bounds for the performance of a classic algorithm in unsupervised learning
(k-means), when used to produce a probability measure derived from the data. In
the course of the analysis, we arrive at new lower bounds, as well as
probabilistic upper bounds on the convergence rate of the empirical law of
large numbers, which, unlike existing bounds, are applicable to a wide class of
measures.Comment: 13 pages, 2 figures. Advances in Neural Information Processing
Systems, NIPS 201
Phase transitions, memory and frustration in a Sznajd-like model with synchronous updating
We introduce a consensus model inspired by the Sznajd Model. The updating is
synchronous and memory plays here a decisive role in making possible the
reaching of total consensus. We study the phase transition between the state
with no-consensus to the state with total consensus.Comment: to be published in the IJMP
The Topological Theory of the Milnor Invariant
We study a topological Abelian gauge theory that generalizes the Abelian
Chern-Simons one, and that leads in a natural way to the Milnor's link
invariant when the classical action on-shell is calculated.Comment: 4 pages; corrected equatio
On the Sample Complexity of Subspace Learning
A large number of algorithms in machine learning, from principal component
analysis (PCA), and its non-linear (kernel) extensions, to more recent spectral
embedding and support estimation methods, rely on estimating a linear subspace
from samples. In this paper we introduce a general formulation of this problem
and derive novel learning error estimates. Our results rely on natural
assumptions on the spectral properties of the covariance operator associated to
the data distribu- tion, and hold for a wide class of metrics between
subspaces. As special cases, we discuss sharp error estimates for the
reconstruction properties of PCA and spectral support estimation. Key to our
analysis is an operator theoretic approach that has broad applicability to
spectral learning methods.Comment: Extendend Version of conference pape
Backscatter Transponder Based on Frequency Selective Surface for FMCW Radar Applications
This paper describes an actively-controlled frequency selective surface (FSS) to implement a backscatter transponder. The FSS is composed by dipoles loaded with switching PIN diodes. The transponder exploits the change in the radar cross section (RCS) of the FSS with the bias of the diodes to modulate the backscattered response of the tag to the FMCW radar. The basic operation theory of the system is explained here. An experimental setup based on a commercial X-band FMCW radar working as a reader is proposed to measure the transponders. The transponder response can be distinguished from the interference of non-modulated clutter, modulating the transponder’s RCS. Some FSS with different number of dipoles are studied, as a proof of concept. Experimental results at several distances are provided
Cosmic ray production in modified gravity
This paper is a reply to the criticism of our work on particle production in
modified gravity by D. Gorbunov and A. Tokareva. We show that their arguments
against efficient particle production are invalid. theories can lead to
an efficient generation of high energy cosmic rays in contracting systems.Comment: In response to criticism by referees several clarifying comments are
added. The results of the paper remain largely unchanged. Version to appear
on EPJ
Time-Evolution of the Power Spectrum of the Black Hole X-ray Nova XTE J1550-564
We have studied the time evolution of the power spectrum of XTE J1550-564,
using X-ray luminosity time series data obtained by the Rossi X-Ray Timing
Explorer satellite. A number of important practical fundamental issues arise in
the analysis of these data, including dealing with time-tagged event data,
removal of noise from a highly non-stationary signal, and comparison of
different time-frequency distributions. We present two new methods to
understand the time frequency variations, and compare them to the dynamic power
spectrum of Homan et al. All of the approaches provide evidence that the QPO
frequency varies in a systematic way during the time evolution of the signal.Comment: 4 pages, 3 figures; 2001 IEEE - EURASIP Workshop on Nonlinear Signal
and Image Processing (June 3-6, 2001), and to appear in the proceeding
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