The unified framework for multi-language sentiment analysis is a vital aspect of understanding customer opinions, emotions, and feedback. This paper presents a unified framework to increase the performance of the multi-language sentimental analysis. Two popular machine translation services, Google Translate, and Yandex Translate are employed to unify the sentiment analysis for the considered languages including English, Turkish, Arabic, and French. Our findings highlight the importance of machine translation services in facilitating and enhancing the performance of sentiment analysis algorithms for different languages. Our framework was evaluated on several datasets and showed promising results, with improvements in accuracy ran...
markdownabstract__Abstract__ Many sentiment analysis methods rely on sentiment lexicons, containi...
Sentiment analysis benefits from large, hand-annotated resources in order to train and test machine ...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Sentiment analysis is currently a very dynamic field in Computational Linguistics. Research herein h...
The past years have shown a steady growth in interest in the Natural Language Processing task of sen...
Sentiment analysis and opinion mining have become emerging topics of research in recent years but mo...
Sentiment analysis is the Natural Language Processing task dealingwith sentiment detection and class...
Sentiment analysis is the Natural Language Processing task dealing with sentiment detection and clas...
This paper presents an evaluation of the use of machine translation to obtain and employ data for tr...
Sentiment analysis research has predominantly been on English texts. Thus there exist many sentiment...
This dataset was generated using two cascading stages of translation—a machine translation followed ...
We propose the creation and use of a multilingual parallel news corpus annotated with opinion toward...
Sentiment analysis refers to retrieving an author's sentiment from a text. We analyze the difference...
Cross-lingual sentiment classification aims to conduct sentiment classification in a target language...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
markdownabstract__Abstract__ Many sentiment analysis methods rely on sentiment lexicons, containi...
Sentiment analysis benefits from large, hand-annotated resources in order to train and test machine ...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
Sentiment analysis is currently a very dynamic field in Computational Linguistics. Research herein h...
The past years have shown a steady growth in interest in the Natural Language Processing task of sen...
Sentiment analysis and opinion mining have become emerging topics of research in recent years but mo...
Sentiment analysis is the Natural Language Processing task dealingwith sentiment detection and class...
Sentiment analysis is the Natural Language Processing task dealing with sentiment detection and clas...
This paper presents an evaluation of the use of machine translation to obtain and employ data for tr...
Sentiment analysis research has predominantly been on English texts. Thus there exist many sentiment...
This dataset was generated using two cascading stages of translation—a machine translation followed ...
We propose the creation and use of a multilingual parallel news corpus annotated with opinion toward...
Sentiment analysis refers to retrieving an author's sentiment from a text. We analyze the difference...
Cross-lingual sentiment classification aims to conduct sentiment classification in a target language...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...
markdownabstract__Abstract__ Many sentiment analysis methods rely on sentiment lexicons, containi...
Sentiment analysis benefits from large, hand-annotated resources in order to train and test machine ...
Many sentiment analysis methods rely on sentiment lexicons, containing words and their associated se...