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LPC Augment: An LPC-Based ASR Data Augmentation Algorithm for Low and Zero-Resource Children's Dialects ...
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Automatic Dialect Density Estimation for African American English ...
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Improved statistical machine translation using monolingual paraphrases ...
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SUper Team at SemEval-2016 Task 3: Building a feature-rich system for community question answering ...
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Feature-Rich Named Entity Recognition for Bulgarian Using Conditional Random Fields ...
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An algorithm to verify local threshold testability of deterministic finite automata ...
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Semi-supervised Development of ASR Systems for Multilingual Code-switched Speech in Under-resourced Languages ...
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Building domain specific lexicon based on TikTok comment dataset ...
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Abstract:
In the sentiment analysis task, predicting the sentiment tendency of a sentence is an important branch. Previous research focused more on sentiment analysis in English, for example, analyzing the sentiment tendency of sentences based on Valence, Arousal, Dominance of sentences. the emotional tendency is different between the two languages. For example, the sentence order between Chinese and English may present different emotions. This paper tried a method that builds a domain-specific lexicon. In this way, the model can classify Chinese words with emotional tendency. In this approach, based on the [13], an ultra-dense space embedding table is trained through word embedding of Chinese TikTok review and emotional lexicon sources(seed words). The result of the model is a domain-specific lexicon, which presents the emotional tendency of words. I collected Chinese TikTok comments as training data. By comparing The training results with the PCA method to evaluate the performance of the model in Chinese sentiment ... : 10 pages, 5 figures ...
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Keyword:
Artificial Intelligence cs.AI; Computation and Language cs.CL; F.2.2, I.2.7; FOS Computer and information sciences
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URL: https://dx.doi.org/10.48550/arxiv.2012.08773 https://arxiv.org/abs/2012.08773
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Precise estimation on the order of local testability of deterministic finite automaton ...
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Reducing the time complexity of testing for local threshold testability ...
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Parsing with Traces: An $O(n^4)$ Algorithm and a Structural Representation ...
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A Chart-Parsing Algorithm for Efficient Semantic Analysis ...
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A Straightforward Approach to Morphological Analysis and Synthesis ...
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