causalizeR: a text mining algorithm to identify causal relationships in scientific literature
Permanent link
https://hdl.handle.net/10037/23168Date
2021-07-20Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Complex interactions among multiple abiotic and biotic drivers result in rapid changes in ecosystems worldwide. Predicting how specific interactions can cause ripple effects potentially resulting in abrupt shifts in ecosystems is of high relevance to policymakers, but difficult to quantify using data from singular cases. We present causalizeR (https://github.com/fjmurguzur/causalizeR), a text-processing algorithm that extracts causal relations from literature based on simple grammatical rules that can be used to synthesize evidence in unstructured texts in a structured manner. The algorithm extracts causal links using the relative position of nouns relative to the keyword of choice to extract the cause and effects of interest. The resulting database can be combined with network analysis tools to estimate the direct and indirect effects of multiple drivers at the network level, which is useful for synthesizing available knowledge and for hypothesis creation and testing. We illustrate the use of the algorithm by detecting causal relationships in scientific literature relating to the tundra ecosystem.
Publisher
PeerJCitation
Ancin Murguzur, Hausner. causalizeR: a text mining algorithm to identify causal relationships in scientific literature. PeerJ. 2021Metadata
Show full item recordCollections
Copyright 2021 The Author(s)