Retraction Note: Unsupervised machine learning and image recognition model application in English part-of-speech feature learning under the open platform environment
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- Retraction Note: Unsupervised machine learning and image recognition model application in English part-of-speech feature learning under the open platform environment
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RETRACTED ARTICLE: Unsupervised machine learning and image recognition model application in English part-of-speech feature learning under the open platform environment
AbstractThe traditional English part-of-speech analysis model fails to meet people’s actual needs due to the fact that the accuracy and other parameters are not up to standard. Facing large-scale English text data, quickly and accurately obtaining the key ...
Lingual-Agnostic Meta-Learning for Low-Resource Part-of-Speech Tagging
ICIT '20: Proceedings of the 2020 8th International Conference on Information Technology: IoT and Smart CityCurrent deep learning based cross-lingual Part-of-Speech (POS) tagging methods are limited by their ability to achieve fast learning and generalization when the data in the target language is scarce. In this paper, we integrate a meta-learning procedure ...
An Adaptive Learning System for English Vocabulary Using Machine Learning
The vocabulary of a language is the collection of words used in that language. The vocabulary learning of English language plays an important role in learning English language. The expansion of learners vocabulary is linked to both their own efforts and ...
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