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On December 16, 2024 at 8:08:22 PM UTC, admin:
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Changed value of field
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in Character-Aware Neural Networks for Word-Level Prediction: Do They Discover Linguistic Rules? -
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in Character-Aware Neural Networks for Word-Level Prediction: Do They Discover Linguistic Rules? -
Added resource Original Metadata to Character-Aware Neural Networks for Word-Level Prediction: Do They Discover Linguistic Rules?
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3 | "author": "Fr\u00e9deric Godin", | 3 | "author": "Fr\u00e9deric Godin", | ||
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15 | "extra_author": "Kris Demuynck", | 15 | "extra_author": "Kris Demuynck", | ||
16 | "orcid": "" | 16 | "orcid": "" | ||
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24 | "orcid": "" | 24 | "orcid": "" | ||
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58 | tworks-for-word-level-prediction--do-they-discover-linguistic-rules-", | 58 | tworks-for-word-level-prediction--do-they-discover-linguistic-rules-", | ||
59 | "notes": "Character-level features are currently used in different | 59 | "notes": "Character-level features are currently used in different | ||
60 | neural network-based natural language processing algorithms. However, | 60 | neural network-based natural language processing algorithms. However, | ||
61 | little is known about the character-level patterns those models learn. | 61 | little is known about the character-level patterns those models learn. | ||
62 | Moreover, models are often compared only quantitatively while a | 62 | Moreover, models are often compared only quantitatively while a | ||
63 | qualitative analysis is missing. In this paper, we investigate which | 63 | qualitative analysis is missing. In this paper, we investigate which | ||
64 | character-level patterns neural networks learn and if those patterns | 64 | character-level patterns neural networks learn and if those patterns | ||
65 | coincide with manually-de\ufb01ned word segmentations and | 65 | coincide with manually-de\ufb01ned word segmentations and | ||
66 | annotations.", | 66 | annotations.", | ||
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119 | Do They Discover Linguistic Rules?", | 160 | Do They Discover Linguistic Rules?", | ||
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