causalmarking
Causalmarking refers to the process of identifying and annotating linguistic expressions that signal a cause-and-effect relationship within a text. These expressions, often called causal connectives or discourse markers, help readers understand the logical structure of a discourse and the connections between ideas. Examples of causalmarking include words and phrases like "because," "since," "as," "so," "therefore," "consequently," "thus," and "due to."
The identification of causalmarking is a key task in natural language processing (NLP) and computational linguistics.
The process of causalmarking can be approached using rule-based methods, machine learning models, or a combination