Title: Ontological Foundations for Scholarly Debate Mapping Technology
1Ontological Foundations for Scholarly Debate
Mapping Technology
Neil BENN, Simon BUCKINGHAM SHUM, John DOMINGUE,
Clara MANCINI
COMMA 08, 29 May 2008
2Outline
- Background Access vs. Analysis
- Research Objectives
- Debate Mapping ontology
- Example Representing analysing the Abortion
Debate - Concluding Remarks
3Access vs. Analysis
- Need to move beyond accessing academic documents
- search engines, digital libraries, e-journals,
e-prints, etc. - Need support for analysing knowledge domains to
determine (e.g.) - Who are the experts?
- What are the canonical papers?
- What is the leading edge?
4Two KDA Approaches
- Bibliometrics approach
- Focus on citation relation
- Thus, low representation costs (automatic
citation mining) - Network-based reasoning for identifying
structures and trends in knowledge domains (e.g.
research fronts) - Tool examples CiteSeer, Citebase, CiteSpace
5CiteSpace
6Two KDA Approaches
- Semantics
- Multiple concept and relation types
- Concepts and relations specified in an ontology
- Ontology-based representation to support more
intelligent information retrieval - Tool examples ESKIMO, CS AKTIVE SPACE,
ClaiMaker, Bibster
7Bibster
8Research Objectives
- None considers the macro-discourse of knowledge
domains - Discourse analysis should be a priority other
forms of analysis are partial indices of
discourse structure - What is the structure of the ongoing dialogue?
What are the controversial issues? What are the
main bodies of opinion? - Aim to support the mapping and analysis of debate
in knowledge domains
9Debate Mapping Ontology
- Based on logic of debate theorised in Yoshimi
(2004) and demonstrated by Robert Horn - Issues, Claims and Arguments
- supports and disputes as main inter-argument
relations - Similar to IBIS structure
- Concerned with macro-argument structure
- What are the properties of a given debate?
10Ex Using Wikipedia Source
11Issues
12Propositions and Arguments
13Publications and Persons
14Explore New Functionality
- Features of the debate not easily obtained from
raw source material - E.g. Detecting clusters of viewpoints in the
debate - A macro-argumentation feature
- As appendix to supplement (not replace) source
material - Reuse citation network clustering technique
15Reuse Mismatch
- Network-based techniques require single-link-type
network representations - Similarity assumed between nodes
- Typically co-citation as similarity measure
16Inference Rules
Co-authorship
Co-membership
- Implement ontology axioms for inferring other
meaningful similarity connections - Rules-of-thumb (heuristics) not laws
17Inference Rules
Mutual Dispute
Mutual Support
- All inferences interpreted as Rhetorical
Similarity in debate context - Need to investigate cases where heuristics
breakdown
18Applying the Rules
19Cluster Analysis
Visualisation and clustering performed using
NetDraw
20Debate Viewpoint Clusters
21Reinstating Semantic Types
BASIC-ANTI-ABORTION-ARGUMENT
BASIC-PRO-ABORTION-ARGUMENT
ABORTION-BREAST-CANCER-HYPOTHESIS
BODILY-RIGHTS-ARGUMENT
DON_MARQUIS
JUDITH_THOMSON
ERIC_OLSON
PETER_SINGER
EQUALITY-OBJECTION-ARGUMENT
CONTRACEPTION-OBJECTION-ARGUMENT
DEAN_STRETTON
RESPONSIBILITY-OBJECTION-ARGUMENT
MICHAEL_TOOLEY
TACIT-CONSENT-OBJECTION-ARGUMENT
Visualisation and clustering performed using
NetDraw
22Two Viewpoint Clusters
BASIC-PRO-ABORTION-ARGUMENT
JUDITH_THOMSON
PETER_SINGER
DEAN_STRETTON
JEFF_MCMAHAN
JEFF_MCMAHAN
ERIC_OLSON
DON_MARQUIS
BASIC-ANTI-ABORTION-ARGUMENT
23Concluding Remarks
- Need for technology to support knowledge domain
analysis - Focussed specifically on the task of analysing
debates within knowledge domains - Ontology-based representation of debate
- Aim to capture macro-argument structure
- With goal of exploring new types of analytical
results - e.g. clusters of viewpoints in the debate (which
is enabled by reusing citation network-based
techniques)
24Limitations Future Work
- The ontology-based representation process is
expensive (time and labour) - Are there enough incentives to makes humans
participate in this labour-intensive task? - Need technical architecture (right tools,
training, etc.) for scaling up - Viewpoint clustering validation
- Currently only intuitively valid
- Possibility of validating against positions
identified by domain experts - Matching against philosophical camps identified
on Horn debate maps of AI domain
25