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Dai Jenkins

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Andy Gittings

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Maria Hayworth

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Jane Eagan

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Meet the Maps: Unconventional Views of Oxford

Series
The Bodleian Libraries (BODcasts)
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Focusing on four very different maps of Oxford - each of the maps has its own tale to tell, some showing Oxford as it was; others showing Oxford as it might have been; and others how Oxford never was.
This webinar will be focus on four very different maps of Oxford from the standpoint of why these maps were made. Each of the maps has its own tale to tell, some showing Oxford as it was; others showing Oxford as it might have been; and others how Oxford never was. Each has an agenda aiming to depict a city under the influence of the military, mass delinquency, motor vehicles or moles. Nick Millea, Map Curator, and Stuart Ackland, Principal Library Assistant, Map Room, will focus on each map’s aesthetic charms, their functionality, and how they have visualised such a well-known city in such unusual ways.

Join us to be surprised, alarmed and charmed in equal measure as we appreciate the purpose of these of maps but never lose sight of the powerful image they are able to convey.

Episode Information

Series
The Bodleian Libraries (BODcasts)
People
Nick Millea
Stuart Ackland
Helen Cook
Keywords
maps
conservation
archives
bodleian
Department: Bodleian Libraries
Date Added: 05/04/2022
Duration: 00:57:15

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The practicalities of academic research ethics - how to get things done

Series
Department of Statistics
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A brief introduction to various legal and procedural ethical concepts and their applications within and beyond academia.
It's all very well to talk about truth, beauty and justice for academic research ethics. But how do you do these things at a practical level? If you have a big idea, or stumble across something with important implications, what do you do with it? How do you make sure you've got appropriate safeguards without drowning in bureaucracy?
Creative Commons Licence
Creative Commons Attribution-Non-Commercial-Share Alike 2.0 UK (BY-NC-SA): England & Wales; https://creativecommons.org/licenses/by-nc-sa/2.0/uk/

Episode Information

Series
Department of Statistics
People
Katherine Fletcher
Keywords
ethics
academia
research
legal
procedure
ethical
Department: Department of Statistics
Date Added: 05/04/2022
Duration: 00:52:45

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Statistics, ethical and unethical: Some historical vignettes

Series
Department of Statistics
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David Steinsaltz gives a lecture on the ethical issues in statistics using historical examples.
Creative Commons Licence
Creative Commons Attribution-Non-Commercial-Share Alike 2.0 UK (BY-NC-SA): England & Wales; https://creativecommons.org/licenses/by-nc-sa/2.0/uk/

Episode Information

Series
Department of Statistics
People
David Steinsaltz
Keywords
statistics
ethics
history
census
eugenics
biostatistics
tobacco
ronald fisher
gaussian
Department: Department of Statistics
Date Added: 05/04/2022
Duration: 00:56:11

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Joining Bayesian submodels with Markov melding

Series
Department of Statistics
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This seminar explains and illustrates the approach of Markov melding for joint analysis.
Integrating multiple sources of data into a joint analysis provides more precise estimates and reduces the risk of biases introduced by using only partial data. However, it can be difficult to conduct a joint analysis in practice. Instead each data source is typically modelled separately, but this results in uncertainty not being fully propagated. We propose to address this problem using a simple, general method, which requires only small changes to existing models and software. We first form a joint Bayesian model based upon the original submodels using a generic approach we call "Markov melding". We show that this model can be fitted in submodel-specific stages, rather than as a single, monolithic model. We also show the concept can be extended to "chains of submodels", in which submodels relate to neighbouring submodels via common quantities. The relationship to the "cut distribution" will also be discussed. We illustrate the approach using examples from an A/H1N1 influenza severity evidence synthesis; integrated population models in ecology; and modelling uncertain-time-to-event data in hospital intensive care units.
Creative Commons Licence
Creative Commons Attribution-Non-Commercial-Share Alike 2.0 UK (BY-NC-SA): England & Wales; https://creativecommons.org/licenses/by-nc-sa/2.0/uk/

Episode Information

Series
Department of Statistics
People
Robert Goudie
Keywords
markov
melding
analysis
data
submodels
joint analysis
influenza
population models
Department: Department of Statistics
Date Added: 05/04/2022
Duration: 00:55:11

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Neural Networks and Deep Kernel Shaping

Series
Department of Statistics
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Rapid training of deep neural networks without skip connections or normalization layers using Deep Kernel Shaping.
Using an extended and formalized version of the Q/C map analysis of Pool et al. (2016), along with Neural Tangent Kernel theory, we identify the main pathologies present in deep networks that prevent them from training fast and generalizing to unseen data, and show how these can be avoided by carefully controlling the "shape" of the network's initialization-time kernel function. We then develop a method called Deep Kernel Shaping (DKS), which accomplishes this using a combination of precise parameter initialization, activation function transformations, and small architectural tweaks, all of which preserve the model class. In our experiments we show that DKS enables SGD training of residual networks without normalization layers on Imagenet and CIFAR-10 classification tasks at speeds comparable to standard ResNetV2 and Wide-ResNet models, with only a small decrease in generalization performance. And when using K-FAC as the optimizer, we achieve similar results for networks without skip connections. Our results apply for a large variety of activation functions, including those which traditionally perform very badly, such as the logistic sigmoid. In addition to DKS, we contribute a detailed analysis of skip connections, normalization layers, special activation functions like RELU and SELU, and various initialization schemes, explaining their effectiveness as alternative (and ultimately incomplete) ways of "shaping" the network's initialization-time kernel.
Creative Commons Licence
Creative Commons Attribution-Non-Commercial-Share Alike 2.0 UK (BY-NC-SA): England & Wales; https://creativecommons.org/licenses/by-nc-sa/2.0/uk/

Episode Information

Series
Department of Statistics
People
James Martens
Keywords
deep kernel shaping
neural
networks
dks
computing
Department: Department of Statistics
Date Added: 05/04/2022
Duration: 00:55:17

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Introduction to Advanced Research Computing at Oxford

Series
Department of Statistics
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Andy Gittings and Dai Jenkins, deliver a graduate lecture on Advance Research Computing (ARC).
Creative Commons Licence
Creative Commons Attribution-Non-Commercial-Share Alike 2.0 UK (BY-NC-SA): England & Wales; https://creativecommons.org/licenses/by-nc-sa/2.0/uk/

Episode Information

Series
Department of Statistics
People
Andy Gittings
Dai Jenkins
Keywords
research
computing
advanced
arc
Department: Department of Statistics
Date Added: 05/04/2022
Duration: 00:48:40

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