280 research outputs found
Fast Inference of Interactions in Assemblies of Stochastic Integrate-and-Fire Neurons from Spike Recordings
We present two Bayesian procedures to infer the interactions and external
currents in an assembly of stochastic integrate-and-fire neurons from the
recording of their spiking activity. The first procedure is based on the exact
calculation of the most likely time courses of the neuron membrane potentials
conditioned by the recorded spikes, and is exact for a vanishing noise variance
and for an instantaneous synaptic integration. The second procedure takes into
account the presence of fluctuations around the most likely time courses of the
potentials, and can deal with moderate noise levels. The running time of both
procedures is proportional to the number S of spikes multiplied by the squared
number N of neurons. The algorithms are validated on synthetic data generated
by networks with known couplings and currents. We also reanalyze previously
published recordings of the activity of the salamander retina (including from
32 to 40 neurons, and from 65,000 to 170,000 spikes). We study the dependence
of the inferred interactions on the membrane leaking time; the differences and
similarities with the classical cross-correlation analysis are discussed.Comment: Accepted for publication in J. Comput. Neurosci. (dec 2010
Analysis of the computational complexity of solving random satisfiability problems using branch and bound search algorithms
The computational complexity of solving random 3-Satisfiability (3-SAT)
problems is investigated. 3-SAT is a representative example of hard
computational tasks; it consists in knowing whether a set of alpha N randomly
drawn logical constraints involving N Boolean variables can be satisfied
altogether or not. Widely used solving procedures, as the
Davis-Putnam-Loveland-Logeman (DPLL) algorithm, perform a systematic search for
a solution, through a sequence of trials and errors represented by a search
tree. In the present study, we identify, using theory and numerical
experiments, easy (size of the search tree scaling polynomially with N) and
hard (exponential scaling) regimes as a function of the ratio alpha of
constraints per variable. The typical complexity is explicitly calculated in
the different regimes, in very good agreement with numerical simulations. Our
theoretical approach is based on the analysis of the growth of the branches in
the search tree under the operation of DPLL. On each branch, the initial 3-SAT
problem is dynamically turned into a more generic 2+p-SAT problem, where p and
1-p are the fractions of constraints involving three and two variables
respectively. The growth of each branch is monitored by the dynamical evolution
of alpha and p and is represented by a trajectory in the static phase diagram
of the random 2+p-SAT problem. Depending on whether or not the trajectories
cross the boundary between phases, single branches or full trees are generated
by DPLL, resulting in easy or hard resolutions.Comment: 37 RevTeX pages, 15 figures; submitted to Phys.Rev.
Reconstructing a Random Potential from its Random Walks
The problem of how many trajectories of a random walker in a potential are
needed to reconstruct the values of this potential is studied. We show that
this problem can be solved by calculating the probability of survival of an
abstract random walker in a partially absorbing potential. The approach is
illustrated on the discrete Sinai (random force) model with a drift. We
determine the parameter (temperature, duration of each trajectory, ...) values
making reconstruction as fast as possible
Heuristic average-case analysis of the backtrack resolution of random 3-Satisfiability instances
An analysis of the average-case complexity of solving random 3-Satisfiability
(SAT) instances with backtrack algorithms is presented. We first interpret
previous rigorous works in a unifying framework based on the statistical
physics notions of dynamical trajectories, phase diagram and growth process. It
is argued that, under the action of the Davis--Putnam--Loveland--Logemann
(DPLL) algorithm, 3-SAT instances are turned into 2+p-SAT instances whose
characteristic parameters (ratio alpha of clauses per variable, fraction p of
3-clauses) can be followed during the operation, and define resolution
trajectories. Depending on the location of trajectories in the phase diagram of
the 2+p-SAT model, easy (polynomial) or hard (exponential) resolutions are
generated. Three regimes are identified, depending on the ratio alpha of the
3-SAT instance to be solved. Lower sat phase: for small ratios, DPLL almost
surely finds a solution in a time growing linearly with the number N of
variables. Upper sat phase: for intermediate ratios, instances are almost
surely satisfiable but finding a solution requires exponential time (2 ^ (N
omega) with omega>0) with high probability. Unsat phase: for large ratios,
there is almost always no solution and proofs of refutation are exponential. An
analysis of the growth of the search tree in both upper sat and unsat regimes
is presented, and allows us to estimate omega as a function of alpha. This
analysis is based on an exact relationship between the average size of the
search tree and the powers of the evolution operator encoding the elementary
steps of the search heuristic.Comment: to appear in Theoretical Computer Scienc
Theoretical study of collective modes in DNA at ambient temperature
The instantaneous normal modes corresponding to base pair vibrations (radial
modes) and twist angle fluctuations (angular modes) of a DNA molecule model at
ambient temperature are theoretically investigated. Due to thermal disorder,
normal modes are not plane waves with a single wave number q but have a finite
and frequency dependent damping width. The density of modes rho(nu), the
average dispersion relation nu(q) as well as the coherence length xi(nu) are
analytically calculated. The Gibbs averaged resolvent is computed using a
replicated transfer matrix formalism and variational wave functions for the
ground and first excited state. Our results for the density of modes are
compared to Raman spectroscopy measurements of the collective modes for DNA in
solution and show a good agreement with experimental data in the low frequency
regime nu < 150 cm^{-1}. Radial modes extend over frequencies ranging from 50
cm^{-1} to 110 cm^{-1}. Angular modes, related to helical axis vibrations are
limited to nu < 25 cm^{-1}. Normal modes are highly disordered and coherent
over a few base pairs only (xi < 2 nm) in good agreement with neutron
scattering experiments.Comment: 20 pages + 13 ps figure
On the trajectories and performance of Infotaxis, an information-based greedy search algorithm
We present a continuous-space version of Infotaxis, a search algorithm where
a searcher greedily moves to maximize the gain in information about the
position of the target to be found. Using a combination of analytical and
numerical tools we study the nature of the trajectories in two and three
dimensions. The probability that the search is successful and the running time
of the search are estimated. A possible extension to non-greedy search is
suggested.Comment: 6 pages, 7 figures, accepted for publication in EP
From principal component to direct coupling analysis of coevolution in proteins: Low-eigenvalue modes are needed for structure prediction
Various approaches have explored the covariation of residues in
multiple-sequence alignments of homologous proteins to extract functional and
structural information. Among those are principal component analysis (PCA),
which identifies the most correlated groups of residues, and direct coupling
analysis (DCA), a global inference method based on the maximum entropy
principle, which aims at predicting residue-residue contacts. In this paper,
inspired by the statistical physics of disordered systems, we introduce the
Hopfield-Potts model to naturally interpolate between these two approaches. The
Hopfield-Potts model allows us to identify relevant 'patterns' of residues from
the knowledge of the eigenmodes and eigenvalues of the residue-residue
correlation matrix. We show how the computation of such statistical patterns
makes it possible to accurately predict residue-residue contacts with a much
smaller number of parameters than DCA. This dimensional reduction allows us to
avoid overfitting and to extract contact information from multiple-sequence
alignments of reduced size. In addition, we show that low-eigenvalue
correlation modes, discarded by PCA, are important to recover structural
information: the corresponding patterns are highly localized, that is, they are
concentrated in few sites, which we find to be in close contact in the
three-dimensional protein fold.Comment: Supporting information can be downloaded from:
http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.100317
Vector Nonlinear Klein-Gordon Lattices: General Derivation of Small Amplitude Envelope Soliton Solutions
Group velocity and group velocity dispersion for a wave packet in vectorial
discrete Klein-Gordon models are obtained by an expansion, based on
perturbation theory, of the linear system giving the dispersion relation and
the normal modes.
We show how to map this expansion on the Multiple Scale Expansion in the real
space and how to find Non Linear Schr\"odinger small amplitude solutions when a
nonlinear one site potential balances the group velocity dispersion effect
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