2019
DOI: 10.1007/978-3-030-23281-8_27
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A Study on Self-attention Mechanism for AMR-to-text Generation

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Cited by 3 publications
(2 citation statements)
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“…We have found 10 out of 90 papers have main purpose to balance the dataset [6], [51], [69], [85], [86], [118], [121], [132], out 90 papers have worked on data to text [48], [56], [65], [83], [103], [105], [111], [129], and speech to text [68], [84], [101], [106]- [108], [113], [116], respectively.7 papers have worked on script writing [3], [17], [58], [61], [86], 5 papers have worked on machine translation [10], [11], [57], [88], [104], [123]. Apart from these, 4 papers have worked on text summarization [50], [88], [100], [130] and 2 papers [1], [91] have worked on abstract meaning representation (AMR)-AMR to text goal is to generate sentences from abstract meaning representation graphs and its seq2seq or graph2seq problem. In addition, we found 2 applications of product reviews [133], [133] of mobile devices that have worked in text generation.…”
Section: Metrics Groupmentioning
confidence: 99%
See 1 more Smart Citation
“…We have found 10 out of 90 papers have main purpose to balance the dataset [6], [51], [69], [85], [86], [118], [121], [132], out 90 papers have worked on data to text [48], [56], [65], [83], [103], [105], [111], [129], and speech to text [68], [84], [101], [106]- [108], [113], [116], respectively.7 papers have worked on script writing [3], [17], [58], [61], [86], 5 papers have worked on machine translation [10], [11], [57], [88], [104], [123]. Apart from these, 4 papers have worked on text summarization [50], [88], [100], [130] and 2 papers [1], [91] have worked on abstract meaning representation (AMR)-AMR to text goal is to generate sentences from abstract meaning representation graphs and its seq2seq or graph2seq problem. In addition, we found 2 applications of product reviews [133], [133] of mobile devices that have worked in text generation.…”
Section: Metrics Groupmentioning
confidence: 99%
“…It is known for semantics. However, many authors have validated the quality of generated text by using BLEU matrix [91]. 4) Limited resources Lack of resources such as dictionaries, POS taggers for low-resource languages such as Bengali, Arabic, Russian, Korean, Slovak, Spanish, Czech, German, Urdu, Hindi, Macedonian, etc.…”
Section: Identified Gapsmentioning
confidence: 99%