CfA: Big Data and HPS
We invite authors
to submit abstracts (up to 500 words) prepared for blind review for a
conference entitled “Big Data and the History and Philosophy of Science” which
will be held on May 18th-19th, 2023 at the University of Toronto. Please see
below for the full conference abstract.
Keynote
Speakers
· Pieter Francois (University of Oxford)
· Rachel Spicer (London School of Economics)
· Charles Pence (UC Louvain)
Philosophers and
historians of science have long been wary about the uses of individual case
studies to evaluate philosophical claims about science. The possibilities of
cherry-picking or shoehorning in preconceived assumptions about scientific
practice into carefully selected examples have led to serious concerns about
the prospects of fruitful ways of testing general claims about the process of
scientific change. The aim of the conference is to bring together an
interdisciplinary array of scholars from philosophy, history, computer science,
AI and deep learning, information science, and the social sciences to discuss
the problems and prospects with using various big data approaches in the field
of the history and philosophy of science.
With the rise of
the digital humanities and the development of a variety of complementary
computer-aided techniques (e.g. distant reading, topic modelling, corpus
analytics), big-data approaches have become more common in several
subdisciplines of history and the humanities. Specifically, they have been used
prominently in two recent projects that will be represented and discussed by
our first two keynote speakers: the Database of Religious
History and Seshat: Global History Databank. The success and
potential demonstrated by these projects suggests the benefits of these methods
for the history of science. While numerous groups are working on digital
humanities/HPS projects with new AI-based tools (e.g. Gingras and Guay 2011),
there remain outstanding issues to be addressed to develop publicly accessible,
centralized databases that can provide an up-to-date synthesis of scholarly
research for specialists and non-specialists alike.
Such databases raise all sorts of issues. Specifically, many questions concerning the identification, reliable extraction, and pattern analysis of historical data need to be addressed. A few, specific examples include:
- What are the challenges of constructing historical databases? How can we build and justify their ontologies? How are key historical variables selected?
- Can deep machine learning or AI techniques expunge helpful data from primary historical texts? Should these tools be only used on primary texts or secondary texts as well?
- Are there limits as to what big data approaches can teach us about the history of science? If so, what are these limitations?
- Can there be a unified vocabulary to identify and define data points across diverse historical episodes? What’s the relation between local vocabularies of actor’s categories and those of historians? How can both be captured while avoiding anachronisms?
- How is the imprecision, incompleteness, and uncertainty of historical data best represented? Is there a substantial difference between inferred and non-inferred historical data? How can differences in historical interpretation best be conceptualized?
- Can historical data be used to derive and justify claims about various historical trends and patterns? How can computational techniques detect patterns and test hypotheses concerning, e.g., the co-evolution of theories, methods, values, and practices, or the composition of scientific communities and their dynamics?
Please submit a 500-word abstract by Google Form by January 15th, 2023. Communication of acceptance will be by March 2023. Please note that the conference aims to be both in-person and online (for those participants who cannot make it to Toronto). However, there remains an open possibility that the event will be hosted fully online.
Conference
Website: https://scientoconference.com/bigdatahps2023/
Organizing
Committee:
·
Jamie Shaw (Leibniz
Universität Hannover)
·
Hakob Barseghyan (University
of Toronto)
·
Benjamin Goldberg (University
of South Florida)
·
Gregory Rupik (University of
Toronto)
If you have
questions, please contact us