2022
DOI: 10.1007/s10115-022-01665-w
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A survey on extraction of causal relations from natural language text

Abstract: As an essential component of human cognition, cause–effect relations appear frequently in text, and curating cause–effect relations from text helps in building causal networks for predictive tasks. Existing causality extraction techniques include knowledge-based, statistical machine learning (ML)-based, and deep learning-based approaches. Each method has its advantages and weaknesses. For example, knowledge-based methods are understandable but require extensive manual domain knowledge and have poor cross-domai… Show more

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Cited by 47 publications
(37 citation statements)
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References 89 publications
(126 reference statements)
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“…To intervene and potentially prevent diabetes distress, it is necessary to understand the causes of diabetes distress from a patient’s perspective to understand how patients see their disease. Causal relation extraction in natural language text has gained popularity in clinical decision-making, biomedical knowledge discovery, or emergency management [ 11 ]. In particular, causal relations on Twitter have been examined for diverse factors causing stress and relaxation [ 12 ], adverse drug reactions [ 13 ], or causal associations related to insomnia or headache [ 14 ].…”
Section: Introductionmentioning
confidence: 99%
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“…To intervene and potentially prevent diabetes distress, it is necessary to understand the causes of diabetes distress from a patient’s perspective to understand how patients see their disease. Causal relation extraction in natural language text has gained popularity in clinical decision-making, biomedical knowledge discovery, or emergency management [ 11 ]. In particular, causal relations on Twitter have been examined for diverse factors causing stress and relaxation [ 12 ], adverse drug reactions [ 13 ], or causal associations related to insomnia or headache [ 14 ].…”
Section: Introductionmentioning
confidence: 99%
“…In particular, causal relations on Twitter have been examined for diverse factors causing stress and relaxation [ 12 ], adverse drug reactions [ 13 ], or causal associations related to insomnia or headache [ 14 ]. Most approaches examine explicit causality in text [ 14 - 16 ], when cause and effect are explicitly stated, for instance, by connective words (eg, so, hence, because, lead to, since, if-then) [ 11 , 17 ]. An example for an explicit cause-effect pair is “diabetes causes hypoglycemia.” However, implicit causality is more complicated to detect such as in “I reversed diabetes with lifestyle changes” with cause “lifestyle changes” and effect “reversed diabetes.”…”
Section: Introductionmentioning
confidence: 99%
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“…Causal Question Answering and Generation applications (Dalal et al, 2021;Hassanzadeh et al, 2019;Stasaski et al, 2021) are some immediate downstream Natural Language Understanding (NLU) applications popular in NLP today. Despite the importance of identifying causality in text, datasets are limited (Asghar, 2016;Xu et al, 2020;Tan et al, 2021;Yang et al, 2021) and oftentimes, different researchers craft their datasets with different rules, leaving users with no proper way to compare models across datasets. Our work is directed at annotating parts of the multilingual protest news detection dataset (Hürriyetoglu et al, 2021a;Hürriyetoglu et al, 2021b;Hürriyetoglu, 2021) for event causality.…”
Section: Introductionmentioning
confidence: 99%
“…More specifically, the current state of research has the following gaps: P1: Rule-based systems [6], [7], [8] are highly dependent on hand-crafted patterns. For this reason, more recent approaches [9], [10] apply Deep Learning (DL) in order to automatically extract useful features from raw text. However, the existing approaches [11], [12], [13] have been trained on corpora not originating from software engineering (e.g., BBC news article set [14]) and are therefore difficult to utilize for RE purposes.…”
Section: Introductionmentioning
confidence: 99%