239 research outputs found
Monte Carlo Study of Pure-Phase Cumulants of 2D q-State Potts Models
We performed Monte Carlo simulations of the two-dimensional q-state Potts
model with q=10, 15, and 20 to study the energy and magnetization cumulants in
the ordered and disordered phase at the first-order transition point .
By using very large systems of size 300 x 300, 120 x 120, and 80 x 80 for q=10,
15, and 20, respectively, our numerical estimates provide practically (up to
unavoidable, but very small statistical errors) exact results which can serve
as a useful test of recent resummed large-q expansions for the energy cumulants
by Bhattacharya `et al.' [J. Phys. I (France) 7 (1997) 81]. Up to the third
order cumulant and down to q=10 we obtain very good agreement, and also the
higher-order estimates are found to be compatible.Comment: 18 pages, LaTeX + 2 postscript figures. To appear in J. Phys. I
(France), May 1997 See also
http://www.cond-mat.physik.uni-mainz.de/~janke/doc/home_janke.htm
Online Learning of a Memory for Learning Rates
The promise of learning to learn for robotics rests on the hope that by
extracting some information about the learning process itself we can speed up
subsequent similar learning tasks. Here, we introduce a computationally
efficient online meta-learning algorithm that builds and optimizes a memory
model of the optimal learning rate landscape from previously observed gradient
behaviors. While performing task specific optimization, this memory of learning
rates predicts how to scale currently observed gradients. After applying the
gradient scaling our meta-learner updates its internal memory based on the
observed effect its prediction had. Our meta-learner can be combined with any
gradient-based optimizer, learns on the fly and can be transferred to new
optimization tasks. In our evaluations we show that our meta-learning algorithm
speeds up learning of MNIST classification and a variety of learning control
tasks, either in batch or online learning settings.Comment: accepted to ICRA 2018, code available:
https://github.com/fmeier/online-meta-learning ; video pitch available:
https://youtu.be/9PzQ25FPPO
A New Data Source for Inverse Dynamics Learning
Modern robotics is gravitating toward increasingly collaborative human robot
interaction. Tools such as acceleration policies can naturally support the
realization of reactive, adaptive, and compliant robots. These tools require us
to model the system dynamics accurately -- a difficult task. The fundamental
problem remains that simulation and reality diverge--we do not know how to
accurately change a robot's state. Thus, recent research on improving inverse
dynamics models has been focused on making use of machine learning techniques.
Traditional learning techniques train on the actual realized accelerations,
instead of the policy's desired accelerations, which is an indirect data
source. Here we show how an additional training signal -- measured at the
desired accelerations -- can be derived from a feedback control signal. This
effectively creates a second data source for learning inverse dynamics models.
Furthermore, we show how both the traditional and this new data source, can be
used to train task-specific models of the inverse dynamics, when used
independently or combined. We analyze the use of both data sources in
simulation and demonstrate its effectiveness on a real-world robotic platform.
We show that our system incrementally improves the learned inverse dynamics
model, and when using both data sources combined converges more consistently
and faster.Comment: IROS 201
A New Perspective and Extension of the Gaussian Filter
The Gaussian Filter (GF) is one of the most widely used filtering algorithms;
instances are the Extended Kalman Filter, the Unscented Kalman Filter and the
Divided Difference Filter. GFs represent the belief of the current state by a
Gaussian with the mean being an affine function of the measurement. We show
that this representation can be too restrictive to accurately capture the
dependences in systems with nonlinear observation models, and we investigate
how the GF can be generalized to alleviate this problem. To this end, we view
the GF from a variational-inference perspective. We analyse how restrictions on
the form of the belief can be relaxed while maintaining simplicity and
efficiency. This analysis provides a basis for generalizations of the GF. We
propose one such generalization which coincides with a GF using a virtual
measurement, obtained by applying a nonlinear function to the actual
measurement. Numerical experiments show that the proposed Feature Gaussian
Filter (FGF) can have a substantial performance advantage over the standard GF
for systems with nonlinear observation models.Comment: Will appear in Robotics: Science and Systems (R:SS) 201
The Coordinate Particle Filter - A novel Particle Filter for High Dimensional Systems
Parametric filters, such as the Extended Kalman Filter and the Unscented
Kalman Filter, typically scale well with the dimensionality of the problem, but
they are known to fail if the posterior state distribution cannot be closely
approximated by a density of the assumed parametric form. For nonparametric
filters, such as the Particle Filter, the converse holds. Such methods are able
to approximate any posterior, but the computational requirements scale
exponentially with the number of dimensions of the state space. In this paper,
we present the Coordinate Particle Filter which alleviates this problem. We
propose to compute the particle weights recursively, dimension by dimension.
This allows us to explore one dimension at a time, and resample after each
dimension if necessary. Experimental results on simulated as well as real data
confirm that the proposed method has a substantial performance advantage over
the Particle Filter in high-dimensional systems where not all dimensions are
highly correlated. We demonstrate the benefits of the proposed method for the
problem of multi-object and robotic manipulator tracking
Ordered vs Disordered: Correlation Lengths of 2D Potts Models at \beta_t
We performed Monte Carlo simulations of two-dimensional -state Potts
models with , and and measured the spin-spin correlation function
at the first-order transition point in the disordered and ordered
phase. Our results for the correlation length in the
disordered phase are compatible with an analytic formula. Estimates of the
correlation length in the ordered phase yield strong numerical
evidence that .Comment: 3 pages, uuencoded compressed postscript file, contribution to the
LATTICE'94 conferenc
Covid-19 as an Incubator Leading to Telemedicine Usage: KM Success Factors in Healthcare
Virtual hospitals offer a platform for healthcare workers to share knowledge, treat patients equally everywhere and, thus, reduce patient mortality rates. Such platforms include different technologies, for example telemedical applications. The use of these technologies and the need to get specific knowledge on the patients’ treatment was reinforced in the past years due by Covid-19. Not only the treatment of Covid-19, but also that of other diseases can be improved by increased technology use. By incorporating the KM success model, we will identify KM success factors leading to the use of virtual hospitals. This research observes the KM success model in the context of the low-digitalized field of healthcare. Consequently, we evaluate how the existing KM success model needs to be adjusted according to the peculiarities of healthcare
- …