2021
DOI: 10.3390/math9212722
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Topic-Based Document-Level Sentiment Analysis Using Contextual Cues

Abstract: Document-level Sentiment Analysis is a complex task that implies the analysis of large textual content that can incorporate multiple contradictory polarities at the phrase and word levels. Most of the current approaches either represent textual data using pre-trained word embeddings without considering the local context that can be extracted from the dataset, or they detect the overall topic polarity without considering both the local and global context. In this paper, we propose a novel document-topic embeddi… Show more

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Cited by 24 publications
(8 citation statements)
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References 39 publications
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“…The logistic regression (LogReg) classifier is a linear regression algorithm to make predictions when the dependent variable is binary [ 35 ]. The algorithm uses a function to minimize the estimators’ errors using the log-likelihood and applies gradient descent to determine the parameters that produce the best estimators [ 36 ]. For the classification task, according to Mitroi et al [ 37 ], given a set of documents d i , where y i is the class of a document, de logistic regression maps the documents to classes using a sigmoid function h θ ( d i ) to determine the parameters of the vector fitting the regression line describer by Equation (2): …”
Section: Methodsmentioning
confidence: 99%
“…The logistic regression (LogReg) classifier is a linear regression algorithm to make predictions when the dependent variable is binary [ 35 ]. The algorithm uses a function to minimize the estimators’ errors using the log-likelihood and applies gradient descent to determine the parameters that produce the best estimators [ 36 ]. For the classification task, according to Mitroi et al [ 37 ], given a set of documents d i , where y i is the class of a document, de logistic regression maps the documents to classes using a sigmoid function h θ ( d i ) to determine the parameters of the vector fitting the regression line describer by Equation (2): …”
Section: Methodsmentioning
confidence: 99%
“…When using the method of sentiment analysis, many researchers used different analysis methods. Zhang et al [ 56 ], Shakil et al [ 57 ] and Phu et al [ 58 ] used dictionary-based methods; Truică et al [ 59 ], Messina et al [ 60 ], Wang et al [ 61 ] and other studies used machine learning, whereas Szabóová et al [ 62 ], Ahmed et al [ 63 ] combine the dictionary-based methods and machine learning. The sentiment dictionary-based method is good at processing fine-grained text sentiment analysis, which is conducive to analyzing sentiment characteristics in specific fields [ 64 ].…”
Section: Literature Reviewmentioning
confidence: 99%
“…In contrast, leveraging LDA necessitates only two steps: preprocessing and applying the LDA model. Also, despite our use of the distilROBERTa database, topic modeling techniques like proper LDA could be used to deepen the sentiment analysis, as has been performed in other works [60]. The use of information diffusion models, such as the MABED (Modeling and Analysis of Burst Event Dynamics) or Peaky Topics algorithm, to study the temporal evolution of topics has also been considered in other works [61].…”
Section: Discussionmentioning
confidence: 99%