Special Issue “Natural Language Engineering: Methods, Tasks and Applications”
- 1.
- Low-resource natural language processing. Yimam et al. state that the available pre-trained models do not fit well with the need for low-resource languages; thus, they introduce different semantic models for Amharic and fine-tune two pre-trained models and train seven new models. Moreover, they employ these models for different NLP tasks and study their impact.
- 2.
- Natural language understanding, generation and grounding. Agafonova et al. revisit the receptive theory in the context of computational creativity; they present a fully autonomous text generation engine with raw output simulating the narrative of a mad digital person and discuss the impact of receptive theory, chance discovery, and simulation of fringe mental state on the understanding of computational creativity.
- 3.
- Neuroscience-inspired cognitive architectures. Onorati et al. propose a model to control a specific class of syntax-oriented neural networks by adding declarative rules, by exploiting parse trees and subtrees, to include human control in NLP systems, and they show that declarative rules representing human knowledge can be effective for some NLP tasks.
- 4.
- Search and information retrieval. Yu et al. underline that classification of resource can help the filtering of massive resources, and they propose for this scope an Association Content Graph Attention Network, which is based on association features and content attributes of academic resources, considering both semantic relevance and academic relevance, to improve the accuracy of academic resource classification.
- 5.
- Text de-identification. Libbi et al. consider the lack of large, annotated Electronic Health Records datasets due to privacy concerns and annotation costs, thus they propose the use of language models for generating artificial data jointly with annotations that can be effectively used, alone or in combination with real data, to train supervised named-entity recognition models for de-identification.
- 6.
- Applications in science, engineering, medicine, healthcare, finance, business, law, education, industry, transportation, retailing, telecommunication and multimedia. Song and Huang propose to use the massive amount of data generated by social media for disaster analysis, and in particular to use Twitter to track disaster events to make a speedy rescue plan, and for this scope, they propose a sentiment-aware contextual model, consisting of a layer that can generate sentimental contextual embeddings from tweets, a BiLSTM layer with attention, and a 1D convolutional layer for local feature extraction, demonstrating superior performance in Tweets-based disaster analysis.
Acknowledgments
Conflicts of Interest
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Esposito, M.; Masala, G.L.; Minutolo, A.; Pota, M. Special Issue “Natural Language Engineering: Methods, Tasks and Applications”. Future Internet 2022, 14, 106. https://doi.org/10.3390/fi14040106
Esposito M, Masala GL, Minutolo A, Pota M. Special Issue “Natural Language Engineering: Methods, Tasks and Applications”. Future Internet. 2022; 14(4):106. https://doi.org/10.3390/fi14040106
Chicago/Turabian StyleEsposito, Massimo, Giovanni Luca Masala, Aniello Minutolo, and Marco Pota. 2022. "Special Issue “Natural Language Engineering: Methods, Tasks and Applications”" Future Internet 14, no. 4: 106. https://doi.org/10.3390/fi14040106
APA StyleEsposito, M., Masala, G. L., Minutolo, A., & Pota, M. (2022). Special Issue “Natural Language Engineering: Methods, Tasks and Applications”. Future Internet, 14(4), 106. https://doi.org/10.3390/fi14040106