Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features

abstract: The subliminal impact of framing of social, political and environmental issues such as climate change has been studied for decades in political science and communications research. Media framing offers an “interpretative package" for average citizens on how to make sense of climate ch...

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Other Authors: Alashri, Saud (Author)
Format: Doctoral Thesis
Language:English
Published: 2018
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.49062
id ndltd-asu.edu-item-49062
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spelling ndltd-asu.edu-item-490622018-06-22T03:09:18Z Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features abstract: The subliminal impact of framing of social, political and environmental issues such as climate change has been studied for decades in political science and communications research. Media framing offers an “interpretative package" for average citizens on how to make sense of climate change and its consequences to their livelihoods, how to deal with its negative impacts, and which mitigation or adaptation policies to support. A line of related work has used bag of words and word-level features to detect frames automatically in text. Such works face limitations since standard keyword based features may not generalize well to accommodate surface variations in text when different keywords are used for similar concepts. This thesis develops a unique type of textual features that generalize <subject, verb, object> triplets extracted from text, by clustering them into high-level concepts. These concepts are utilized as features to detect frames in text. Compared to uni-gram and bi-gram based models, classification and clustering using generalized concepts yield better discriminating features and a higher classification accuracy with a 12% boost (i.e. from 74% to 83% F-measure) and 0.91 clustering purity for Frame/Non-Frame detection. The automatic discovery of complex causal chains among interlinked events and their participating actors has not yet been thoroughly studied. Previous studies related to extracting causal relationships from text were based on laborious and incomplete hand-developed lists of explicit causal verbs, such as “causes" and “results in." Such approaches result in limited recall because standard causal verbs may not generalize well to accommodate surface variations in texts when different keywords and phrases are used to express similar causal effects. Therefore, I present a system that utilizes generalized concepts to extract causal relationships. The proposed algorithms overcome surface variations in written expressions of causal relationships and discover the domino effects between climate events and human security. This semi-supervised approach alleviates the need for labor intensive keyword list development and annotated datasets. Experimental evaluations by domain experts achieve an average precision of 82%. Qualitative assessments of causal chains show that results are consistent with the 2014 IPCC report illuminating causal mechanisms underlying the linkages between climatic stresses and social instability. Dissertation/Thesis Alashri, Saud (Author) Davulcu, Hasan (Advisor) Desouza, Kevin C. (Committee member) Maciejewski, Ross (Committee member) Hsiao, Sharon (Committee member) Arizona State University (Publisher) Computer science Artificial intelligence Climate Change Data Mining Machine Learning Natural Language Processing Semantic Computing eng 120 pages Doctoral Dissertation Computer Science 2018 Doctoral Dissertation http://hdl.handle.net/2286/R.I.49062 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2018
collection NDLTD
language English
format Doctoral Thesis
sources NDLTD
topic Computer science
Artificial intelligence
Climate Change
Data Mining
Machine Learning
Natural Language Processing
Semantic Computing
spellingShingle Computer science
Artificial intelligence
Climate Change
Data Mining
Machine Learning
Natural Language Processing
Semantic Computing
Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
description abstract: The subliminal impact of framing of social, political and environmental issues such as climate change has been studied for decades in political science and communications research. Media framing offers an “interpretative package" for average citizens on how to make sense of climate change and its consequences to their livelihoods, how to deal with its negative impacts, and which mitigation or adaptation policies to support. A line of related work has used bag of words and word-level features to detect frames automatically in text. Such works face limitations since standard keyword based features may not generalize well to accommodate surface variations in text when different keywords are used for similar concepts. This thesis develops a unique type of textual features that generalize <subject, verb, object> triplets extracted from text, by clustering them into high-level concepts. These concepts are utilized as features to detect frames in text. Compared to uni-gram and bi-gram based models, classification and clustering using generalized concepts yield better discriminating features and a higher classification accuracy with a 12% boost (i.e. from 74% to 83% F-measure) and 0.91 clustering purity for Frame/Non-Frame detection. The automatic discovery of complex causal chains among interlinked events and their participating actors has not yet been thoroughly studied. Previous studies related to extracting causal relationships from text were based on laborious and incomplete hand-developed lists of explicit causal verbs, such as “causes" and “results in." Such approaches result in limited recall because standard causal verbs may not generalize well to accommodate surface variations in texts when different keywords and phrases are used to express similar causal effects. Therefore, I present a system that utilizes generalized concepts to extract causal relationships. The proposed algorithms overcome surface variations in written expressions of causal relationships and discover the domino effects between climate events and human security. This semi-supervised approach alleviates the need for labor intensive keyword list development and annotated datasets. Experimental evaluations by domain experts achieve an average precision of 82%. Qualitative assessments of causal chains show that results are consistent with the 2014 IPCC report illuminating causal mechanisms underlying the linkages between climatic stresses and social instability. === Dissertation/Thesis === Doctoral Dissertation Computer Science 2018
author2 Alashri, Saud (Author)
author_facet Alashri, Saud (Author)
title Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
title_short Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
title_full Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
title_fullStr Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
title_full_unstemmed Detecting Frames and Causal Relationships in Climate Change Related Text Databases Based on Semantic Features
title_sort detecting frames and causal relationships in climate change related text databases based on semantic features
publishDate 2018
url http://hdl.handle.net/2286/R.I.49062
_version_ 1718701714346868736