Neural Machine Translation (NMT) systems require a massive amount of Maintaining semantic relations between words during the translation process yields more accurate target-language output from Neural Machine Translation (NMT). Although difficult to achieve from training data alone, it is possible to leverage Knowledge Graphs (KGs) to retain source-language semantic relations in the corresponding target-language translation. The core idea is to use KG entity relations as embedding constraints to improve the mapping from source to target. This paper describes two embedding constraints, both of which employ Entity Linking (EL)---assigning a unique identity to entities---to associate words in training sentences with those in the KG: (1) a mono...
Embedding matrices are key components in neural natural language processing (NLP) models that are re...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Knowledge-enhanced language representation learning has shown promising results across various knowl...
Neural Machine Translation (NMT) systems require a massive amount of Maintaining semantic relations ...
Maintaining semantic relations between words during the translation process yields more accurate tar...
This paper presents an extension of neural machine translation (NMT) model to incorporate additional...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
This article has been published in a revised form in Natural Language Engineering https://doi.org/10...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Pre-training and fine-tuning have achieved great success in natural language process field. The stan...
Incorporating tagging into neural machine translation (NMT) systems has shown promising results in h...
State-of-the-art neural machine translation (NMT) systems are sequence-to-sequence neural networks w...
Neural language models have drastically changed the landscape of natural language processing (NLP). ...
Knowledge graph embedding aims at representing entities and relations in a knowledge graph as dense,...
In most Knowledge Graphs (KGs), textual descriptions ofentities are provided in multiple natu...
Embedding matrices are key components in neural natural language processing (NLP) models that are re...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Knowledge-enhanced language representation learning has shown promising results across various knowl...
Neural Machine Translation (NMT) systems require a massive amount of Maintaining semantic relations ...
Maintaining semantic relations between words during the translation process yields more accurate tar...
This paper presents an extension of neural machine translation (NMT) model to incorporate additional...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
This article has been published in a revised form in Natural Language Engineering https://doi.org/10...
Neural language models learn word representations that capture rich linguistic and conceptual inform...
Pre-training and fine-tuning have achieved great success in natural language process field. The stan...
Incorporating tagging into neural machine translation (NMT) systems has shown promising results in h...
State-of-the-art neural machine translation (NMT) systems are sequence-to-sequence neural networks w...
Neural language models have drastically changed the landscape of natural language processing (NLP). ...
Knowledge graph embedding aims at representing entities and relations in a knowledge graph as dense,...
In most Knowledge Graphs (KGs), textual descriptions ofentities are provided in multiple natu...
Embedding matrices are key components in neural natural language processing (NLP) models that are re...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
Knowledge-enhanced language representation learning has shown promising results across various knowl...