Published May 11, 2020
| Version v1
Conference paper
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NUIG at TIAD: Combining Unsupervised NLP and Graph Metrics for Translation Inference
Description
In this paper, we present the NUIG system at the TIAD shared task. This system includes graph-based metrics calculated using novel algorithms, with an unsupervised document embedding tool called ONETA and an unsupervised multi-way neural machine translation method. The results are an improvement over our previous system and produce the highest precision among all systems in the task as well as very competitive F-Measure results. Incorporating features from other systems should be easy in the framework we describe in this paper, suggesting this could very easily be extended to an even stronger result.
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