Olivia Guest
University College London
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Publication
Featured researches published by Olivia Guest.
PeerJ | 2017
Nicolas P. Rougier; Konrad Hinsen; Frédéric Alexandre; Thomas Arildsen; Lorena A. Barba; Fabien Benureau; C. Titus Brown; Pierre de Buyl; Ozan Caglayan; Andrew P. Davison; Marc-André Delsuc; Georgios Detorakis; Alexandra K. Diem; Damien Drix; Pierre Enel; Benoît Girard; Olivia Guest; Matt G. Hall; Rafael Neto Henriques; Xavier Hinaut; Kamil S. Jaron; Mehdi Khamassi; Almar Klein; Tiina Manninen; Pietro Marchesi; Daniel J. McGlinn; Christoph Metzner; Owen L. Petchey; Hans E. Plesser; Timothée Poisot
Computer science offers a large set of tools for prototyping, writing, running, testing, validating, sharing and reproducing results, however computational science lags behind. In the best case, authors may provide their source code as a compressed archive and they may feel confident their research is reproducible. But this is not exactly true. James Buckheit and David Donoho proposed more than two decades ago that an article about computational results is advertising, not scholarship. The actual scholarship is the full software environment, code, and data that produced the result. This implies new workflows, in particular in peer-reviews. Existing journals have been slow to adapt: source codes are rarely requested, hardly ever actually executed to check that they produce the results advertised in the article. ReScience is a peer-reviewed journal that targets computational research and encourages the explicit replication of already published research, promoting new and open-source implementations in order to ensure that the original research can be replicated from its description. To achieve this goal, the whole publishing chain is radically different from other traditional scientific journals. ReScience resides on GitHub where each new implementation of a computational study is made available together with comments, explanations, and software tests.
eLife | 2017
Olivia Guest; Bradley C. Love
The success of fMRI places constraints on the nature of the neural code. The fact that researchers can infer similarities between neural representations, despite fMRI’s limitations, implies that certain neural coding schemes are more likely than others. For fMRI to succeed given its low temporal and spatial resolution, the neural code must be smooth at the voxel and functional level such that similar stimuli engender similar internal representations. Through proof and simulation, we determine which coding schemes are plausible given both fMRI’s successes and its limitations in measuring neural activity. Deep neural network approaches, which have been forwarded as computational accounts of the ventral stream, are consistent with the success of fMRI, though functional smoothness breaks down in the later network layers. These results have implications for the nature of the neural code and ventral stream, as well as what can be successfully investigated with fMRI. DOI: http://dx.doi.org/10.7554/eLife.21397.001
Cognitive Systems Research | 2014
Richard P. Cooper; Olivia Guest
Contemporary methods of computational cognitive modeling have recently been criticized by Addyman and French (2012) on the grounds that they have not kept up with developments in computer technology and human-computer interaction. They present a manifesto for change according to which, it is argued, modelers should devote more effort to making their models accessible, both to non-modelers (with an appropriate easy-to-use user interface) and modelers alike. We agree that models, like data, should be freely available according to the normal standards of science, but caution against confusing implementations with specifications. Models may embody theories, but they generally also include implementation assumptions. Cognitive modeling methodology needs to be sensitive to this. We argue that specification, replication and experimentation are methodological approaches that can address this issue.
PLOS ONE | 2015
Bradley C. Love; Łukasz Kopeć; Olivia Guest
People are optimistic about their prospects relative to others. However, existing studies can be difficult to interpret because outcomes are not zero-sum. For example, one person avoiding cancer does not necessitate that another person develops cancer. Ideally, optimism bias would be evaluated within a closed formal system to establish with certainty the extent of the bias and the associated environmental factors, such that optimism bias is demonstrated when a population is internally inconsistent. Accordingly, we asked NFL fans to predict how many games teams they liked and disliked would win in the 2015 season. Fans, like ESPN reporters assigned to cover a team, were overly optimistic about their team’s prospects. The opposite pattern was found for teams that fans disliked. Optimism may flourish because year-to-year team results are marked by auto-correlation and regression to the group mean (i.e., good teams stay good, but bad teams improve).
Proceedings of the 13th Neural Computation and Psychology Workshop | 2014
Olivia Guest; Richard P. Cooper; Eddy J. Davelaar
Book synopsis: Computational Models of Cognitive Processes collects refereed versions of papers presented at the 13th Neural Computation and Psychology Workshop (NCPW13) that took place July 2012, in San Sebastian (Spain). This workshop series is a well-established and unique forum that brings together researchers from such diverse disciplines as artificial intelligence, cognitive science, computer science, neurobiology, philosophy and psychology to discuss their latest work on models of cognitive processes.
Proceedings of the 11th international conference on cognitive modeling | 2012
Olivia Guest; Richard P. Cooper
arXiv: Computers and Society | 2017
Olivia Guest; Bradley C. Love
Cognitive Science | 2017
Bradley C. Love; Olivia Guest; Piotr Slomka; Victor M. Navarro; Edward A. Wasserman
The Winnower | 2016
Olivia Guest
IEEE CIS Newsletter on Cognitive and Developmental Systems | 2016
Olivia Guest; Nicolas P. Rougier