IMPROVED EMOJI IDENTIFICATION FOR SENTENCE USINGLSTM IN RNN
2020
We proposed an improved sentence classification using emoji. Word embedding are used to assign
emoji for sentences. The benchmark existing models speak to the word as a position vector in
word embedding space. These researchers convert each word in the sentence into their word
vectors and afterward take a mean of word vectors. They were used pre-trained word embeddings
for representing words in a sentence. Thus, existing proposals cannot catch the multiple aspects
and context of the sentence. Furthermore, due to taking the normal of word vectors of given
sentence, existing strategies perform less precision at sentence order for accurate emoji. In this
paper, we proposed an improved sentence classification which is used LSTM units in RNN model
and train the existing embeddings during model creation based on training set. This proposal
improved word embedding vector when the model can be updated with new training examples. It
likewise has generally high segregating power, on account of sentence is represented in various
feature space by representing to each feature dimension with potential highlights. Experimental
results on various data sets show that an accuracy of about100% on training set and about 98% on
test set. Overall, the proposed model can make moderately incredible various interpretable
highlights and word vector embeddings and gives the extension to actualize new strategies to
improve the sentence characterization. Further, it very well may be utilized to improve the
exhibition of sentence representation, document classification and representation and text
characterization.
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