The Event Causality Identification Shared Task of CASE 2022 involved two subtasks working on the Causal News Corpus. Subtask 1 required participants to predict if a sentence contains a causal relation or not. This is a supervised binary classification task. Subtask 2 required participants to identify the Cause, Effect and Signal spans per causal sentence. This could be seen as a supervised sequence labeling task. For both subtasks, participants uploaded their predictions for a held-out test set, and ranking was done based on binary F1 and macro F1 scores for Subtask 1 and 2, respectively. This paper summarizes the work of the 17 teams that submitted their results to our competition and 12 system description papers that were received. The be...
Semantic relations between various text units play an important role in natural language understand...
We propose a method for recognizing such event causalities as "smoke cigarettes" → "die of lung canc...
The overwhelming amount of online news presents a challenge called news information overload. To mit...
The Event Causality Identification Shared Task of CASE 2022 involved two subtasks working on the Cau...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
In this paper, we describe our participation in the subtask 1 of CASE-2022, Event Causality Identifi...
In this paper, we describe our shared task submissions for Subtask 2 in CASE-2022, Event Causality I...
This thesis mainly studies the causality in natural language processing. Understanding causality is ...
A fundamental goal of scientific research is to learn about causal relationships. However, despite i...
This paper details our participation in the Challenges and Applications of Automated Extraction of S...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Many financial jobs rely on news to learn about causal events in the past and present, to make infor...
Causal knowledge extraction is the task of extracting relevant causes and effects from text by detec...
Semantic relations between various text units play an important role in natural language understand...
We propose a method for recognizing such event causalities as "smoke cigarettes" → "die of lung canc...
The overwhelming amount of online news presents a challenge called news information overload. To mit...
The Event Causality Identification Shared Task of CASE 2022 involved two subtasks working on the Cau...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
Despite the importance of understanding causality, corpora addressing causal relations are limited. ...
In this paper, we describe our participation in the subtask 1 of CASE-2022, Event Causality Identifi...
In this paper, we describe our shared task submissions for Subtask 2 in CASE-2022, Event Causality I...
This thesis mainly studies the causality in natural language processing. Understanding causality is ...
A fundamental goal of scientific research is to learn about causal relationships. However, despite i...
This paper details our participation in the Challenges and Applications of Automated Extraction of S...
The abundance of information on the internet has impacted the lives of people to a great extent. Peo...
Many financial jobs rely on news to learn about causal events in the past and present, to make infor...
Causal knowledge extraction is the task of extracting relevant causes and effects from text by detec...
Semantic relations between various text units play an important role in natural language understand...
We propose a method for recognizing such event causalities as "smoke cigarettes" → "die of lung canc...
The overwhelming amount of online news presents a challenge called news information overload. To mit...