Title:    Comparing the utility of different classification schemes for emotive language analysis


Citation
Williams L, Spasic I, Artemiou A, et al.  (2019). Comparing the utility of different classification schemes for emotive language analysisCardiff Universityhttps://doi.org/10.17035/d.2019.0067889599



Access RightsCreative Commons Attribution 4.0 International

Access Method:  https://doi.org/10.17035/d.2019.0067889599 will take you to the repository page for this dataset, where you will be able to download the data or find further access information, as appropriate.


Dataset Details

PublisherCardiff University

Date (year) of data becoming publicly available2019

Coverage start date01/01/2015

Coverage end date17/03/2016

Data format.csv

Estimated total storage size of datasetLess than 100 megabytes

DOI 10.17035/d.2019.0067889599

DOI URLhttp://doi.org/10.17035/d.2019.0067889599


Description

We investigated the utility of different classification schemes for emotive language analysis. We compared six schemes: (1) Ekman's six basic emotions, (2) Plutchik's wheel of emotion, (3) Watson and Tellegen's Circumplex theory of affect, (4) the Emotion Annotation Representation Language (EARL), (5) WordNet-Affect, and (6) free text classification scheme. 

To measure their utility, we investigated their ease of use by human annotators as well as the performance of supervised machine learning when these schemes were used to annotate the training data. We assembled a corpus of 500 emotionally charged tweets. To ensure that the text contained emotion, we collected tweets based on their inclusion of emoticons, hashtags including emotion terms, idioms, and tweets with an automatically generated sentiment. We also include emotionally neutral or ambiguous tweets while correcting for bias towards certain emotions based on the choice of idioms, emoticons and hashtags.

The corpus was annotated manually using an online crowdsourcing platform (CrowdFlower) by five independent annotators per text document, per classification scheme.

The data provided here consists of the annotator id (their IP address), the annotation given, and the text document from the corpus, per classification scheme. 

Research results based upon these data are published at http://doi.org/10.1007/s00357-019-9307-0


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Last updated on 2024-22-04 at 14:10