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Article
Publication date: 1 May 1996

Tanya M. Cassidy

Many researchers who have studied drinking in Ireland have worked under the assumption that the Irish have a particularly acute problem with alcohol. Through an investigation of…

Abstract

Many researchers who have studied drinking in Ireland have worked under the assumption that the Irish have a particularly acute problem with alcohol. Through an investigation of historical and contemporary writings on the subject I demonstrate that the problem is more complicated than traditional images would lead one to believe. Generally it is not known that Ireland has one of the lowest rates of alcohol consumption in Europe and one of the highest percentages of abstainers, although it is also true that Ireland has one of the highest hospital admission rates for alcohol‐related illnesses. In an attempt to understand the complex variety of drinking behaviours in Ireland, I advocate the reinterpretation and use of the concept of ambivalence in the context of Irish drinking, adapting ideas of Barth (originally applied to Bah) in the process.

Details

International Journal of Sociology and Social Policy, vol. 16 no. 5/6
Type: Research Article
ISSN: 0144-333X

Open Access
Book part
Publication date: 18 July 2022

Christian Versloot, Maria Iacob and Klaas Sikkel

Utility strikes have spawned companies specializing in providing a priori analyses of the underground. Geophysical techniques such as Ground Penetrating Radar (GPR) are harnessed…

Abstract

Utility strikes have spawned companies specializing in providing a priori analyses of the underground. Geophysical techniques such as Ground Penetrating Radar (GPR) are harnessed for this purpose. However, analyzing GPR data is labour-intensive and repetitive. It may therefore be worthwhile to amplify this process by means of Machine Learning (ML). In this work, harnessing the ADR design science methodology, an Intelligence Amplification (IA) system is designed that uses ML for decision-making with respect to utility material type. It is driven by three novel classes of Convolutional Neural Networks (CNNs) trained for this purpose, which yield accuracies of 81.5% with outliers of 86%. The tool is grounded in the available literature on IA, ML and GPR and is embedded into a generic analysis process. Early validation activities confirm its business value.

Abstract

Details

Mixed-Race in the US and UK: Comparing the Past, Present, and Future
Type: Book
ISBN: 978-1-78769-554-2

Article
Publication date: 7 June 2021

Marco Humbel, Julianne Nyhan, Andreas Vlachidis, Kim Sloan and Alexandra Ortolja-Baird

By mapping-out the capabilities, challenges and limitations of named-entity recognition (NER), this article aims to synthesise the state of the art of NER in the context of the…

Abstract

Purpose

By mapping-out the capabilities, challenges and limitations of named-entity recognition (NER), this article aims to synthesise the state of the art of NER in the context of the early modern research field and to inform discussions about the kind of resources, methods and directions that may be pursued to enrich the application of the technique going forward.

Design/methodology/approach

Through an extensive literature review, this article maps out the current capabilities, challenges and limitations of NER and establishes the state of the art of the technique in the context of the early modern, digitally augmented research field. It also presents a new case study of NER research undertaken by Enlightenment Architectures: Sir Hans Sloane's Catalogues of his Collections (2016–2021), a Leverhulme funded research project and collaboration between the British Museum and University College London, with contributing expertise from the British Library and the Natural History Museum.

Findings

Currently, it is not possible to benchmark the capabilities of NER as applied to documents of the early modern period. The authors also draw attention to the situated nature of authority files, and current conceptualisations of NER, leading them to the conclusion that more robust reporting and critical analysis of NER approaches and findings is required.

Research limitations/implications

This article examines NER as applied to early modern textual sources, which are mostly studied by Humanists. As addressed in this article, detailed reporting of NER processes and outcomes is not necessarily valued by the disciplines of the Humanities, with the result that it can be difficult to locate relevant data and metrics in project outputs. The authors have tried to mitigate this by contacting projects discussed in this paper directly, to further verify the details they report here.

Practical implications

The authors suggest that a forum is needed where tools are evaluated according to community standards. Within the wider NER community, the MUC and ConLL corpora are used for such experimental set-ups and are accompanied by a conference series, and may be seen as a useful model for this. The ultimate nature of such a forum must be discussed with the whole research community of the early modern domain.

Social implications

NER is an algorithmic intervention that transforms data according to certain rules-, patterns- or training data and ultimately affects how the authors interpret the results. The creation, use and promotion of algorithmic technologies like NER is not a neutral process, and neither is their output A more critical understanding of the role and impact of NER on early modern documents and research and focalization of some of the data- and human-centric aspects of NER routines that are currently overlooked are called for in this paper.

Originality/value

This article presents a state of the art snapshot of NER, its applications and potential, in the context of early modern research. It also seeks to inform discussions about the kinds of resources, methods and directions that may be pursued to enrich the application of NER going forward. It draws attention to the situated nature of authority files, and current conceptualisations of NER, and concludes that more robust reporting of NER approaches and findings are urgently required. The Appendix sets out a comprehensive summary of digital tools and resources surveyed in this article.

Details

Journal of Documentation, vol. 77 no. 6
Type: Research Article
ISSN: 0022-0418

Keywords

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