Principal Aim
This project seeks to develop, test, and ethically evaluate
a novel computational methodology — perspectival sentiment mapping —
which analyses how individuals and groups construct and contest social
realities through pronoun-positioned sentiment toward shared concepts. Using UK
Parliamentary Records (Hansard) as a grounded, publicly available testbed, the
study will assess whether linguistic perspective structures correlate with
observable political behaviour (e.g. voting records), and explore the
implications for wider applications in primary care mental health, multi-agency
working, and community-level social analysis.
Background and Rationale
Public institutions increasingly rely on sentiment analysis
to understand public opinion, professional disagreement, and social conflict.
However, conventional sentiment analysis treats opinion as an individual
psychological attribute rather than a relational and perspectival phenomenon.
This limits its usefulness in contexts where disagreement reflects differing
constructions of reality rather than simple attitudinal polarity.
Linguistic research, social psychology, and clinical theory
converge on the insight that pronoun usage encodes perspective, agency, and
social alignment. In political, clinical, and community discourse, pronouns
(“I”, “we”, “they”) structure who is positioned as agent, who is aligned, and
who is othered. These structures are central to:
- contested
political realities,
- professional
disagreement in multi-agency systems,
- interpersonal
conflict and relational distress in mental health contexts.
This project proposes an ethically constrained methodology
that maps sentiment toward shared concepts as expressed from different
pronoun positions, producing a structured representation of how realities
are linguistically constructed and contested.
Hansard provides an ideal ethical test case: it is public,
well-documented, attributed, temporally structured, and linked to independent
behavioural records (votes). Demonstrating validity here provides grounding
before any application to sensitive domains such as health or community data.
Research Questions
- Can
pronoun-positioned sentiment toward shared policy concepts be reliably
extracted from parliamentary discourse?
- Do
these perspectival sentiment profiles cluster in ways that align with, but
are not reducible to, party affiliation?
- Do
divergences in perspectival sentiment correlate with observable
legislative behaviour (e.g. voting divergence, rebellion)?
- What
ethical insights emerge regarding the interpretation of contested realities,
responsibility, and agency in institutional discourse?
- Under
what ethical constraints could this methodology be responsibly adapted for
community and primary care mental health contexts?
Methodology
Data Sources
Primary dataset:
- UK
Parliamentary Records (Hansard), accessed via official XML/API archives.
Supplementary dataset:
- Public
voting records (e.g. UK Parliament API, Public Whip).
All data are publicly available, non-sensitive, and pertain
to elected officials acting in their official capacity.
Sampling Strategy (Initial Phase)
The pilot phase will focus on:
- A
defined parliamentary period (e.g. one parliamentary session or two-year
window).
- 3–5
policy domains with high levels of contestation (e.g. housing,
immigration, welfare, policing, climate/energy).
- All
MPs contributing to debates within those domains during the sampling
window.
This bounded sampling ensures analytical tractability while
preserving institutional and ideological diversity.
Analytical Procedure
One Excel spreadsheet will be created for every concept identified, with rows populated by MPs and columns populated by the first/second and third person, singular or plural, pronouns they use in reference to the concept identified. A value will be assigned to each cell based on the frequency and intensity of positive or negative sentiments expressed by each MP towards the concept identified. These values will be used to conduct multivariate statistical analyses looking at how MPs positions towards the concepts cluster and change over time.
1. Text Processing: Tokenisation, part-of-speech tagging, and dependency parsing using established NLP libraries.
2. Concept Identification: Policy concepts defined via curated keyword sets and validated through embedding-based expansion.
3. Pronoun Positioning: Identification of pronoun usage (e.g. I, we, they, you, impersonal/passive forms); Contextual classification of collective pronouns (e.g. government, party, nation) using debate metadata and linguistic heuristics.
4. Sentiment Attribution: Local sentiment analysis using scientifically approved coding methods, applied at sentence or clause level, linked specifically to concept mentions and pronoun positions.
5. Perspectival Stance Vectors: For each MP, construct multidimensional vectors capturing sentiment toward each concept from each pronoun position.
6. Mapping and Analysis: Dimensionality reduction and clustering to visualise perspectival similarity and divergence; Comparison with voting behaviour and party alignment; Temporal analysis to observe shifts preceding behavioural change.
Validation and Evaluation
Validity will be assessed through:
- Structural
validity: recovery of known political alignments without supervised
labels.
- Explanatory
value: identification of meaningful intra-party variation and
cross-party alignment.
- Temporal
coherence: alignment between linguistic shifts and subsequent voting
behaviour.
The project explicitly avoids claims of prediction or causal
inference.
Ethical Considerations
Data Ethics
- All
data are public and pertain to professional political activity.
- No
private individuals are analysed.
- No
personal or sensitive data are collected.
Interpretive Ethics
- The
methodology does not label beliefs, motivations, or psychological
traits.
- Findings
are framed as structures of discourse, not properties of persons.
- Outputs
are aggregated and contextualised to avoid reputational harm or
misinterpretation.
Downstream Application Safeguards
This project functions as an ethical proving ground. Any
future extension to community or health contexts would require:
- explicit
informed consent,
- strict
anonymisation and aggregation thresholds,
- separation
of analytical insight from decision-making authority,
- prohibition
of individual profiling, prediction, or enforcement use.
The methodology is designed to support institutional
reflexivity and listening, not surveillance or control.
Upscaling and Future Phases
Following successful validation, the methodology could be
ethically adapted to:
- Community
discourse analysis (e.g. social media, consultations), using
aggregate, anonymised data to understand relational sentiment toward
public services.
- Multi-agency
professional communication, supporting reflective practice and
coordination without performance monitoring.
- Primary
care mental health research, as a supplementary tool for understanding
relational narratives and contested realities, never as a diagnostic
instrument.
Each upscaling step would require a distinct ethics review
and participatory governance model.
Wider Implications
This research contributes to:
- political
science (discourse and institutional behaviour),
- computational
social science,
- ethics
of AI and public-sector analytics,
- mental
health and systems-based care theory.
This research seeks to understand how interpersonal attachment relationships within a defined social network evolve over time. By reframing sentiment as perspectival and relational, the project offers a more humane and analytically precise way of understanding disagreement, conflict, and plural realities in democratic and care-based institutions.
Conclusion
This proposal outlines a carefully bounded, ethically robust
study that grounds a novel analytical methodology in a transparent, public, and
high-stakes institutional setting. Demonstrating validity and limitations in
this context provides a responsible foundation for any future application to
more sensitive social and clinical domains.
The project prioritises interpretive caution, ethical
governance, and public value throughout.
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