Towards Unsupervised Learning of Temporal Relations between Events

Author:

Mirroshandel S.A.,Ghassem-Sani G.

Abstract

Automatic extraction of temporal relations between event pairs is an important task for several natural language processing applications such as Question Answering, Information Extraction, and Summarization. Since most existing methods are supervised and require large corpora, which for many languages do not exist, we have concentrated our efforts to reduce the need for annotated data as much as possible. This paper presents two different algorithms towards this goal. The first algorithm is a weakly supervised machine learning approach for classification of temporal relations between events. In the first stage, the algorithm learns a general classifier from an annotated corpus. Then, inspired by the hypothesis of "one type of temporal relation per discourse'', it extracts useful information from a cluster of topically related documents. We show that by combining the global information of such a cluster with local decisions of a general classifier, a bootstrapping cross-document classifier can be built to extract temporal relations between events. Our experiments show that without any additional annotated data, the accuracy of the proposed algorithm is higher than that of several previous successful systems. The second proposed method for temporal relation extraction is based on the expectation maximization (EM) algorithm. Within EM, we used different techniques such as a greedy best-first search and integer linear programming for temporal inconsistency removal. We think that the experimental results of our EM based algorithm, as a first step toward a fully unsupervised temporal relation extraction method, is encouraging.

Publisher

AI Access Foundation

Subject

Artificial Intelligence

Cited by 5 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. An Easy Data Augmentation Approach for Application Reviews Event Inference;IEEE Transactions on Software Engineering;2023-10-01

2. Caspar;Proceedings of the ACM/IEEE 42nd International Conference on Software Engineering;2020-06-27

3. A Survey on Temporal Reasoning for Temporal Information Extraction from Text;Journal of Artificial Intelligence Research;2019-09-30

4. Survey of Temporal Information Extraction;J INF PROCESS SYST;2019

5. Annotation projection for temporal information extraction;Natural Language Engineering;2019-05

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