10,333 research outputs found
Profinite completion and double-dual : isomorphisms and counter-examples
We define, for any group , finite approximations ; with this tool, we give
a new presentation of the profinite completion of
an abtract group . We then prove the following theorem : if is a finite
prime field and if is a -vector space, then, there is a natural
isomorphism between (for the underlying additive group structure) and
the additive group of the double-dual . This theorem gives
counter-examples concerning the iterated profinite completions of a group.
These phenomena don't occur in the topological case
Self-interfering wavepackets
We study the propagation of non-interacting polariton wavepackets. We show
how two qualitatively different concepts of mass that arise from the peculiar
polariton dispersion lead to a new type of particle-like object from
non-interacting fields---much like self-accelerating beams---shaped by the Rabi
coupling out of Gaussian initial states. A divergence and change of sign of the
diffusive mass results in a "mass wall" on which polariton wavepackets bounce
back. Together with the Rabi dynamics, this yield propagation of ultrafast
subpackets and ordering of a spacetime crystal.Comment: (no movies part of this preprint
Expressing Bayesian Fusion as a Product of Distributions: Application to Randomized Hough Transform
Data fusion is a common issue of mobile robotics, computer assisted
medical diagnosis or behavioral control of simulated character for instance. However
data sources are often noisy, opinion for experts are not known with absolute
precision, and motor commands do not act in the same exact manner on the environment.
In these cases, classic logic fails to manage efficiently the fusion process.
Confronting different knowledge in an uncertain environment can therefore be adequately
formalized in the bayesian framework.
Besides, bayesian fusion can be expensive in terms of memory usage and processing
time. This paper precisely aims at expressing any bayesian fusion process as a
product of probability distributions in order to reduce its complexity. We first study
both direct and inverse fusion schemes. We show that contrary to direct models,
inverse local models need a specific prior in order to allow the fusion to be computed
as a product. We therefore propose to add a consistency variable to each local
model and we show that these additional variables allow the use of a product of the
local distributions in order to compute the global probability distribution over the
fused variable. Finally, we take the example of the Randomized Hough Transform.
We rewrite it in the bayesian framework, considering that it is a fusion process
to extract lines from couples of dots in a picture. As expected, we can find back
the expression of the Randomized Hough Transform from the literature with the
appropriate assumptions
Expressing Bayesian Fusion as a Product of Distributions: Application in Robotics
More and more fields of applied computer
science involve fusion of multiple data sources, such as sensor
readings or model decision. However incompleteness of the
models prevent the programmer from having an absolute
precision over their variables. Therefore bayesian framework
can be adequate for such a process as it allows handling of
uncertainty.We will be interested in the ability to express any
fusion process as a product, for it can lead to reduction of
complexity in time and space. We study in this paper various
fusion schemes and propose to add a consistency variable to
justify the use of a product to compute distribution over the
fused variable. We will then show application of this new
fusion process to localization of a mobile robot and obstacle
avoidance
Microring resonator refractive index sensor with integrated spectrometer
We present a SOI ring based sensor read-out system. The novelty of the architecture lies in the capability to sense the shifts of multiple peaks simultaneously with an integrated AWG spectrometer
A Hitchhiker's Guide to Statistical Comparisons of Reinforcement Learning Algorithms
Consistently checking the statistical significance of experimental results is
the first mandatory step towards reproducible science. This paper presents a
hitchhiker's guide to rigorous comparisons of reinforcement learning
algorithms. After introducing the concepts of statistical testing, we review
the relevant statistical tests and compare them empirically in terms of false
positive rate and statistical power as a function of the sample size (number of
seeds) and effect size. We further investigate the robustness of these tests to
violations of the most common hypotheses (normal distributions, same
distributions, equal variances). Beside simulations, we compare empirical
distributions obtained by running Soft-Actor Critic and Twin-Delayed Deep
Deterministic Policy Gradient on Half-Cheetah. We conclude by providing
guidelines and code to perform rigorous comparisons of RL algorithm
performances.Comment: 8 pages + supplementary materia
CLIC: Curriculum Learning and Imitation for object Control in non-rewarding environments
In this paper we study a new reinforcement learning setting where the
environment is non-rewarding, contains several possibly related objects of
various controllability, and where an apt agent Bob acts independently, with
non-observable intentions. We argue that this setting defines a realistic
scenario and we present a generic discrete-state discrete-action model of such
environments. To learn in this environment, we propose an unsupervised
reinforcement learning agent called CLIC for Curriculum Learning and Imitation
for Control. CLIC learns to control individual objects in its environment, and
imitates Bob's interactions with these objects. It selects objects to focus on
when training and imitating by maximizing its learning progress. We show that
CLIC is an effective baseline in our new setting. It can effectively observe
Bob to gain control of objects faster, even if Bob is not explicitly teaching.
It can also follow Bob when he acts as a mentor and provides ordered
demonstrations. Finally, when Bob controls objects that the agent cannot, or in
presence of a hierarchy between objects in the environment, we show that CLIC
ignores non-reproducible and already mastered interactions with objects,
resulting in a greater benefit from imitation
The ATLAS liquid argon hadronic end-cap calorimeter: construction and selected beam test results
ATLAS has chosen for its Hadronic End-Cap Calorimeter (HEC) the copper-liquid
argon sampling technique with flat plate geometry and GaAs pre-amplifiers in
the argon. The contruction of the calorimeter is now approaching completion.
Results of production quality checks are reported and their anticipated impact
on calorimeter performance discussed. Selected results, such as linearity,
electron and pion energy resolution, uniformity of energy response, obtained in
beam tests both of the Hadronic End-Cap Calorimeter by itself, and in the ATLAS
configuration where the HEC is in combination with the Electromagnetic End-Cap
Calorimeter (EMEC) are described.Comment: 4 pages, 2 figures,IPRD04 conferenc
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