Bhatia, Sudeep
(2018).
Event construal and temporal distance in natural language.
[Data Collection]. Colchester, Essex:
UK Data Archive.
10.5255/UKDA-SN-852831
This network project brings together economists, psychologists, computer and complexity scientists from three leading centres for behavioural social science at Nottingham, Warwick and UEA. This group will lead a research programme with two broad objectives: to develop and test cross-disciplinary models of human behaviour and behaviour change; to draw out their implications for the formulation and evaluation of public policy.
Foundational research will focus on three inter-related themes: understanding individual behaviour and behaviour change; understanding social and interactive behaviour; rethinking the foundations of policy analysis.
The project will explore implications of the basic science for policy via a series of applied projects connecting naturally with the three themes. These will include: the determinants of consumer credit behaviour; the formation of social values; strategies for evaluation of policies affecting health and safety.
The research will integrate theoretical perspectives from multiple disciplines and utilise a wide range of complementary methodologies including: theoretical modeling of individuals, groups and complex systems; conceptual analysis; lab and field experiments; analysis of large data sets.
The Network will promote high quality cross-disciplinary research and serve as a policy forum for understanding behaviour and behaviour change.
Data description (abstract)
Construal level theory proposes that events that are temporally proximate are represented more concretely than events that are temporally distant. We tested this prediction using two large natural language text corpora. In study 1 we examined posts on Twitter that referenced the future, and found that tweets mentioning temporally proximate dates used more concrete words than those mentioning distant dates. In study 2 we obtained all New York Times articles that referenced U.S. presidential elections between 1987 and 2007. We found that the concreteness of the words in these articles increased with the temporal proximity to their corresponding election. Additionally the reduction in concreteness after the election was much greater than the increase in concreteness leading up to the election, though both changes in concreteness were well described by an exponential function. We replicated this finding with New York Times articles referencing US public holidays. Overall, our results provide strong support for the predictions of construal level theory, and additionally illustrate how large natural language datasets can be used to inform psychological theory.
Data creators: |
Creator Name |
Affiliation |
ORCID (as URL) |
Bhatia Sudeep |
University of Pennsylvania |
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Contributors: |
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Sponsors: |
Economic and Social Research Council
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Grant reference: |
ES/K002201/1
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Topic classification: |
Economics Psychology
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Keywords: |
construal level theory, psychological distance, natural language, big data
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Project title: |
Network for Integrated Behavioural Science
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Grant holders: |
Chris Starmer, Nick Chater, Daniel John Zizzo, Gordon Brown, Anders Poulsen, Martin Sefton, Neil Stewart, Uwe Aickelin, Robert Sugden, John Gathergood, Abigail Barr, Enrique Fatas, Shaun Hargreaves-Heap, Robin Cubitt, Robert MacKay, Graham Loomes, Theodore Turocy, Simon Gaechter, Daniel Read
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Project dates: |
From | To |
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31 December 2012 | 30 September 2017 |
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Date published: |
07 Dec 2017 15:24
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Last modified: |
07 Feb 2018 15:17
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Collection period: |
Date from: | Date to: |
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31 December 2012 | 30 September 2017 |
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Country: |
United Kingdom |
Data collection method: |
Experimental data. In study 1, we collected and analyzed millions of time-indexed posts on Twitter. In this study we obtained a large number of tweets that referenced dates in the future, and were able to use these tweets to determine the concreteness of the language used to describe events at these dates. This allowed us to observe how psychological distance influences everyday discourse, and put the key assumptions of the CLT to a real-world test. In study 2, we analyzed word concreteness in news articles using the New York Times (NYT) Annotated Corpus (Sandhaus, 2008). This corpus contains over 1.8 million NYT articles written between 1987 and 2007. Importantly for our purposes, these articles are tagged with keywords describing the topics of the articles. In this study we obtained all NYT articles written before and after the 1988, 1992, 1996, 2000, and 2004 US Presidential elections, which were tagged as pertaining to these elections. We subsequently tested how the concreteness of the words used in the articles varied as a function of temporal distance to the election they reference. We also performed this analysis with NYT articles referencing three popular public holidays. Unlike study 1 and prior work (such as Snefjella & Kuperman, 2015), study 2 allowed us to examine the influence of temporal distance in the past and in the future, while controlling for the exact time when specific events occurred. |
Observation unit: |
Individual |
Kind of data: |
Numeric |
Type of data: |
Experimental data
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Resource language: |
English |
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Rights owners: |
Name |
Affiliation |
ORCID (as URL) |
Bhatia Sudeep |
University of Pennsylvania |
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Contact: |
Name | Email | Affiliation | ORCID (as URL) |
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Bhatia, Sudeep | bhatiasu@sas.upenn.edu | University of Pennsylvania | Unspecified |
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Notes on access: |
The Data Collection is available to any user without the requirement for registration for download/access.
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Publisher: |
UK Data Archive
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Last modified: |
07 Feb 2018 15:17
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