Volume 10 Number 3
Circling around texts and language: towards “pragmatic modelling” in Digital Humanities
Abstract
In this paper we introduce the syntagm “pragmatic modelling” as a productive way of contextualising research in Digital Humanities (DH). We define “pragmatic modelling” as a middle-out approach (neither top down nor bottom up) that combines formal and experimental modelling techniques with an effective use of language. Furthermore, in order to elucidate a “pragmatic understanding” of model building, we reflect on texts (considered here as objects) and modelling (or strategy of analysis) in DH research (and teaching). This paper does not identify a new practice or approach; rather it offers an explanatory framework for existing practices. As the paper explains, this framework goes beyond existing ones and allows us to think about modelling in a more integral way. Drawing on this framework, we reveal how DH modelling practices challenge epistemological and linguistic restrictions, by, for example, problematising the adoption of terminology belonging to the domain of computer sciences. Reflections on metaphorical reasoning are used to exemplify how polarities and some rigidities DH research could find itself embedded in are overcome in practice. We conclude by advocating the importance of a diachronic and historical analysis of the role of metaphors in DH to further explore the relation between theory and practice as well as to develop models of modelling integral to DH research.
1. Introduction
- “text”: dynamic cultural objects (material documents as well as immaterial objects)[3] contingent to the contexts of production and reading, expressed in a wide range of manifestations from linear to discontinuous narrative, from manuscripts to printed editions, encompassing hybrid modalities;
- “modelling”: a DH-specific research and teaching activity, but also connected to multifaceted conceptualisations of model building as used and understood by other disciplines and practices.
1.1. A pragmatic understanding of modelling
[...] in the context of an intentional act (i.e. the pragmatics), a subject chooses a set of objects Oi=1,...,n (i.e. the extension of the model) and a theory or language (i.e. the intension of the model), which together determine the semantics of the model, and an object Omod the attributes of which act as the syntax of the model on the basis of a representational relation between themselves and the semantic model attributes: in the context of a theory and with respect to the respective end, Omod becomes a model of the objects Oi=1,...,n [Kralemann and Lattmann 2013, fig. 5]
2. Modelling in DH
To address the questions above we will reflect on objects, practices and languages of modelling in DH.[...] by its nature the TEI is designed to handle not only the modeling of that data, but also the markers of transcriptional, editorial, and interpretative self-awareness: the non-transparency of the modeling process is itself part of what is being modeled (and again, I would claim that this is a distinctive feature of humanities data modeling). [Flanders 2012]
2.1. Texts as complex and open objects
2.2. Middle ground: modelling practice and languages
You may find you have to name things; you may have to reify them, not in the social science sense of making them … beneath attention but in the AI [Artificial Intelligence] sense of making them into things that you can address and talk about and think about. That’s one of the reasons for modelling in general. One reason why do [sic] we care about making our assumptions and fundamental beliefs explicit? So that we can look at them and say, “Well, actually I don’t like that one! Could we do without that one? Can I build a system that doesn’t rely on that assumption?” If you don’t ever surface your assumptions, you’re never going to be able to think about building that system, let alone build it. And you might want to build it, because our assumptions turn out to have teeth. [Sperberg-McQueen 2012]
Some modelling attempts in DH have embarked on dedicated efforts to problematise terminology. For example [Crofts et al. 2011] developed refined formalisations of concepts for cultural heritage information systems; [Eide et al. 2013] tackle the complexity of spatio-temporal concepts in humanities and arts; [Brown and Simpson 2013] discuss how concepts of difference and “personhood” are flattened and smoothened out while cherry-picking extant semantic web ontological models for research in the humanities; [Renear et al. 2010] call for a rigorous analysis of what “datasets” in multidisciplinary contexts are for libraries, publishing, and data curation.concept of an ontology as the agreement reached by multiple parties (e.g., programmers, scientists, collaborators, librarians) with the aim of accomplishing some objectives (e.g., data exchange between applications, communication between people, integration of disparate representations). Using a metaphor, ontologies are contracts, they are the currency used to perform some valuable operations. Thus, their importance is ultimately related not to their truth or beauty, but to the ease they bring to the collaboration among people. To use a less “commercial” metaphor an ontology is a compromise or a point of contact between specific and possibly divergent models. The issue is therefore not only to identify commonalities between projects, for instance, but also to agree that the compromises so found wonʼt diminish the value of the underlying idiosyncratic models, the specificity of any single project or interpretation. We believe that in the humanities this agreement is not necessarily reachable once for all or hoped for, because it may imply the negation of the interpretative efforts that make a work or a project unique and the negation of the evolutionary nature of scholarship. However, we also think that the possibility to make two incommensurable categorical systems communicate could be a challenge worth pursuing. [Pasin and Ciula 2009]
During the “data acquisition” phase, factoids provided historians with both a guiding metaphor (helping them conceptualize the broader approach being used) and a usable structure for the data entry work. Secondly, within the “data storage” context, factoids proved to be a practical, flexible, and sustainable schema for designing databases. Thirdly, during the “data presentation” phase, the factoid notion has been used with success to the purpose of building user interfaces that are simple yet rich in the way they combine and organize information about people and make it available to the historians using our online resources. [Pasin and Bradley 2013, 4]
3. The place of DH
Fictions do not have the same role in all of science. They are a particular kind of tool, and their role changes over time and space. Since WWII, model-based science has probably become more prominent, and more recognizable as a distinct strategy rather than an ingredient in a blend. (This would make some sense of the earlier tendency to see fictionalizing as either everywhere or nowhere.) Thinking and talking of model systems as imaginary concreta may have become more noticeable, too. This is perhaps especially due to the role played by computers. Computers have turned attention away from analytical methods to some extent. They also make it possible to model more causal detail, and are powerful tools for visualization. [Godfrey-Smith 2009, 108]
3.1. Middle out method: metaphorical reasoning and pragmatic modelling
all data have to be understood as capta and the conventions created to express observer-independent models of knowledge need to be radically reworked to express humanistic interpretation. [Drucker 2011]
- Variability - the range of choices in the use of language cannot be seen as static in any respect;
- Negotiability - such choices are not made mechanically or according to strict rules or fixed form-function relationships, but on the basis of highly flexible principles and strategies, thus also implying the indeterminacy and unexclusiveness of the choices being made;
- Adaptability - such negotiable choices can be adapted based on specific needs and contexts according to a variable range of possibilities.
4. Conclusions
Notes
.Multidimensionality, complexity, and non-linearity are just a few among the many characteristic features of narratives that could not be easily reduced to the unambiguous abstract language of databases. As a result, downplaying or eliminating narratives about people in virtue of a systematic use of formal structures often causes historians to worry [...]. It is precisely in this context that the ‘factoid’- based prosopography was first developed. [...] the factoid model has been used in a number of prosopographical projects that, taken as a whole, span across almost two thousand years of history. This would not have been possible unless this conceptual framework was general enough to allow this degree of reusability; however, it is also true that each single project required a number of extensions to the model. [...] our factoid approach can show that formal structuring if designed correctly need not impose, as Veltman implies, a single perspective on the data it models, but is capable of accommodating a range of views from the different sources. [Pasin and Bradley 2013, 4–11]