396 research outputs found
Real-time adaptive track generation in racing games
Real-time Adaptive Track Generation in Racing Game
Maximum likelihood and pseudo score approaches for parametric time-to-event analysis with informative entry times
We develop a maximum likelihood estimating approach for time-to-event Weibull
regression models with outcome-dependent sampling, where sampling of subjects
is dependent on the residual fraction of the time left to developing the event
of interest. Additionally, we propose a two-stage approach which proceeds by
iteratively estimating, through a pseudo score, the Weibull parameters of
interest (i.e., the regression parameters) conditional on the inverse
probability of sampling weights; and then re-estimating these weights (given
the updated Weibull parameter estimates) through the profiled full likelihood.
With these two new methods, both the estimated sampling mechanism parameters
and the Weibull parameters are consistently estimated under correct
specification of the conditional referral distribution. Standard errors for the
regression parameters are obtained directly from inverting the observed
information matrix in the full likelihood specification and by either
calculating bootstrap or robust standard errors for the hybrid pseudo
score/profiled likelihood approach. Loss of efficiency with the latter approach
is considered. Robustness of the proposed methods to misspecification of the
referral mechanism and the time-to-event distribution is also briefly examined.
Further, we show how to extend our methods to the family of parametric
time-to-event distributions characterized by the generalized gamma
distribution. The motivation for these two approaches came from data on time to
cirrhosis from hepatitis C viral infection in patients referred to the
Edinburgh liver clinic. We analyze these data here.Comment: Published in at http://dx.doi.org/10.1214/14-AOAS725 the Annals of
Applied Statistics (http://www.imstat.org/aoas/) by the Institute of
Mathematical Statistics (http://www.imstat.org
Lost in America: Helping Your Friends Find Their Way Home
Tom Clegg and Warren Bird have teamed together to write a thought provoking new book Lost in America. Chapter Two of their new book is excerpted here and presents “Seven Deadly Statistics” that will cause most of us to think twice about what is taking place in evangelism in North America
Anterior Hippocampus and Goal-Directed Spatial Decision Making
Contains fulltext :
115487.pdf (publisher's version ) (Open Access
Practical Lossless Compression with Latent Variables using Bits Back Coding
Deep latent variable models have seen recent success in many data domains.
Lossless compression is an application of these models which, despite having
the potential to be highly useful, has yet to be implemented in a practical
manner. We present `Bits Back with ANS' (BB-ANS), a scheme to perform lossless
compression with latent variable models at a near optimal rate. We demonstrate
this scheme by using it to compress the MNIST dataset with a variational
auto-encoder model (VAE), achieving compression rates superior to standard
methods with only a simple VAE. Given that the scheme is highly amenable to
parallelization, we conclude that with a sufficiently high quality generative
model this scheme could be used to achieve substantial improvements in
compression rate with acceptable running time. We make our implementation
available open source at https://github.com/bits-back/bits-back
Detecting the Gravitational Redshift of Cluster Gas
We examine the gravitational redshift of radiation emitted from within the
potential of a cluster. Spectral lines from the intracluster medium (ICM) are
redshifted in proportion to the emission-weighted mean potential along the line
of sight, amounting to approximately 50 km/s at a radius of 100 kpc/h, for a
cluster dispersion of 1200 km/s. We show that the relative redshifts of
different ionization states of metals in the ICM provide a unique probe of the
three-dimensional matter distribution. An examination of the reported peculiar
velocities of cD galaxies in well studied Abell clusters reveals they are
typically redshifted by an average of km/s. This can be achieved by
gravity with the addition of a steep central potential associated with the cD
galaxy. Note that in general gravitational redshifts cause a small overestimate
of the recessional velocities of clusters by an average of 20 km/s.Comment: 6 pages, 3 figures, accepted to the Astrophysical Journal Letter
Spread Divergences
For distributions p and q with different supports, the divergence D(p|q) may
not exist. We define a spread divergence on modified p and q and describe
sufficient conditions for the existence of such a divergence. We demonstrate
how to maximize the discriminatory power of a given divergence by
parameterizing and learning the spread. We also give examples of using a spread
divergence to train and improve implicit generative models, including linear
models (Independent Components Analysis) and non-linear models (Deep Generative
Networks)
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