1,443 research outputs found
Cluster detection and risk estimation for spatio-temporal health data
In epidemiological disease mapping one aims to estimate the spatio-temporal
pattern in disease risk and identify high-risk clusters, allowing health
interventions to be appropriately targeted. Bayesian spatio-temporal models are
used to estimate smoothed risk surfaces, but this is contrary to the aim of
identifying groups of areal units that exhibit elevated risks compared with
their neighbours. Therefore, in this paper we propose a new Bayesian
hierarchical modelling approach for simultaneously estimating disease risk and
identifying high-risk clusters in space and time. Inference for this model is
based on Markov chain Monte Carlo simulation, using the freely available R
package CARBayesST that has been developed in conjunction with this paper. Our
methodology is motivated by two case studies, the first of which assesses if
there is a relationship between Public health Districts and colon cancer
clusters in Georgia, while the second looks at the impact of the smoking ban in
public places in England on cardiovascular disease clusters
Co-viewing TV with Twitter: more interesting than the shows?
Social media services, and Twitter in particular, are changing the way in which many people consume traditional broadcast media. Real-time backchannel conversations are now common-place as audiences simultaneously watch TV whilst using Twitter to broadcast their own thoughts, sentiments, opinions and emotions related to what they are watching. This individual behavior, when aggregated, results in a new social experience comprising of mass, real-time, coconsumption of TV services that has, thus far, been neither recognized nor investigated by the HCI
community nor the broadcast industry. This paper describes a work-in-progress which aims to understand
user behaviour in this burgeoning area and provides some preliminary analysis of viewersā Twitter activity
surrounding the popular UK TV show, The X Factor
A history of the development of the mathematics and statistics support community in the United Kingdom. Part 1: From alpha to sigma
In terms of the history of mathematics higher education, mathematics and statistics support (MSS) is a very recent development, existing as a formal feature for less than 50 years.Ā However, in this short time, MSS has displayed its own characteristics.Ā A particularly notable feature of MSS in the United Kingdom (and in other countries) has been the way in which practitioners have collaborated with each other, almost from the outset.Ā This collaboration has led to the creation of a community (the sigma network) with a written constitution and formal membership.Ā This two-part article traces the history of the development of the MSS community in the UK from its earliest incarnations to the present day.Ā The first part of the article reviews the period from the early 1990s to 2005 during which time the key events were the rise and demise of the Mathematics Support Association and the creation of sigma, Centre of Excellence in University-wide Mathematics and Statistics Support.
A Bayesian spaceātime model for clustering areal units based on their disease trends
Population-level disease risk across a set of non-overlapping areal units varies in space and time, and a large research literature has developed methodology for identifying clusters of areal units exhibiting elevated risks. However, almost no research has extended the clustering paradigm to identify groups of areal units exhibiting similar temporal disease trends. We present a novel Bayesian hierarchical mixture model for achieving this goal, with inference based on a Metropolis-coupled Markov chain Monte Carlo ((MC)
3
) algorithm. The effectiveness of the (MC)
3
algorithm compared to a standard Markov chain Monte Carlo implementation is demonstrated in a simulation study, and the methodology is motivated by two important case studies in the United Kingdom. The first concerns the impact on measles susceptibility of the discredited paper linking the measles, mumps, and rubella vaccination to an increased risk of Autism and investigates whether all areas in the Scotland were equally affected. The second concerns respiratory hospitalizations and investigates over a 10 year period which parts of Glasgow have shown increased, decreased, and no change in risk
Accelerated Neural Networks on OpenCL Devices Using SYCL-DNN
Over the past few years machine learning has seen a renewed explosion of
interest, following a number of studies showing the effectiveness of neural
networks in a range of tasks which had previously been considered incredibly
hard. Neural networks' effectiveness in the fields of image recognition and
natural language processing stems primarily from the vast amounts of data
available to companies and researchers, coupled with the huge amounts of
compute power available in modern accelerators such as GPUs, FPGAs and ASICs.
There are a number of approaches available to developers for utilizing GPGPU
technologies such as SYCL, OpenCL and CUDA, however many applications require
the same low level mathematical routines. Libraries dedicated to accelerating
these common routines allow developers to easily make full use of the available
hardware without requiring low level knowledge of the hardware themselves,
however such libraries are often provided by hardware manufacturers for
specific hardware such as cuDNN for Nvidia hardware or MIOpen for AMD hardware.
SYCL-DNN is a new open-source library dedicated to providing accelerated
routines for neural network operations which are hardware and vendor agnostic.
Built on top of the SYCL open standard and written entirely in standard C++,
SYCL-DNN allows a user to easily accelerate neural network code for a wide
range of hardware using a modern C++ interface. The library is tested on AMD's
OpenCL for GPU, Intel's OpenCL for CPU and GPU, ARM's OpenCL for Mali GPUs as
well as ComputeAorta's OpenCL for R-Car CV engine and host CPU. In this talk we
will present performance figures for SYCL-DNN on this range of hardware, and
discuss how high performance was achieved on such a varied set of accelerators
with such different hardware features.Comment: 4 pages, 3 figures. In International Workshop on OpenCL (IWOCL '19),
May 13-15, 2019, Bosto
GASP: Guitars with ambisonic spatial performance
āGuitars with Ambisonic Spatial Performanceā (GASP) is an ongoing project where our expertise in surround sound algorithmic research is combined with off-the-shelf hardware and bespoke software to create a spatial multichannel surround guitar performance system. This poster was funded through the āUndergraduate Research Scholarship Schemeā (URSS) and presented at the University of Derby Buxton Campus 10th Annual Learning & Teaching conference on Wednesday 1st July 2015. The theme being āStudents as Partners: Linking Teaching, Research and Enterpriseā. The poster was also utilised as a contribution to the Creative Technologies Research Group (CTRG) āSounds in Spaceā symposium held at the University of Derby in June 2015, at which three pieces of multichannel guitar recordings were demonstrated.āUndergraduate Research Scholarship Schemeā (URSS) University of Derb
The Effectiveness of a Primary School Based Badminton Intervention on Childrenās Fundamental Movement Skills
This study examined the effects of the Badminton World Federation (BWF) Shuttle Time program on fundamental movement skills (FMS) in English children. A total of 124 children; 66 in key stage 1 (ages 6–7 years) and 58 in key stage 2 (10–11 years) undertook the Shuttle Time program, once weekly for six weeks (n = 63) or acted as controls (n = 61). Pre, post and ten-weeks post, both process and product FMS were determined. Children in the intervention group, aged 6–7 years, had higher total process FMS (via test of gross motor development-2) compared to the control group at post and ten-weeks post intervention (both p = 0.0001, d = 0.6 and 0.7, respectively). There were no significant differences in process FMS scores for children aged 10–11 years. Ten-meter sprint speed decreased pre to post and was maintained at ten-weeks post for the intervention groups aged 6–7 years (p = 0.0001, d = 0.6) and 10–11 years (p = 0.001, d = 0.2) compared to control. Standing long jump distance increased pre to post (p = 0.0001, d = 0.8) and was maintained at ten-weeks post (p = 0.0001, d = 0.5) for the intervention group. Medicine ball throw performance increased pre to post (p = 0.0001, d = 0.3) for the intervention group. The BWF Shuttle Time program is beneficial in developing FMS for key stage 1 children (ages 6–7)
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