CATENA: CAusal and TEmporal relation extraction from NAtural language texts

COLING 2016  ·  Paramita Mirza, Sara Tonelli ·

We present CATENA, a sieve-based system to perform temporal and causal relation extraction and classification from English texts, exploiting the interaction between the temporal and the causal model. We evaluate the performance of each sieve, showing that the rule-based, the machine-learned and the reasoning components all contribute to achieving state-of-the-art performance on TempEval-3 and TimeBank-Dense data. Although causal relations are much sparser than temporal ones, the architecture and the selected features are mostly suitable to serve both tasks. The effects of the interaction between the temporal and the causal components, although limited, yield promising results and confirm the tight connection between the temporal and the causal dimension of texts.

PDF Abstract COLING 2016 PDF COLING 2016 Abstract

Datasets


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Temporal Information Extraction TimeBank Catena F1 score 0.511 # 1

Methods


No methods listed for this paper. Add relevant methods here