This paper investigates sentiment analysis in Arabic tweets that have the presence of Jordanian dialect. A new dataset was collected during the coronavirus disease (COVID-19) pandemic. We demonstrate two models: the Traditional Arabic Language (TAL) model and the Semantic Partitioning Arabic Language (SPAL) model to envisage the polarity of the collected tweets by invoking several, well-known classifiers. The extraction and allocation of numerous Arabic features, such as lexical features, writing style features, grammatical features, and emotional features, have been used to analyze and classify the collected tweets semantically. The partitioning concept was performed on the original dataset by utilizing the hidden semantic meaning between ...
Sentiment analysis (SA) refers as computational and natural language processing techniques used to e...
Arab users of social media have significantly increased, thus increasing the opportunities for extra...
With the vast increase of social media users over the past few years, millions of product reviews a...
International audienceIn recent years, the use of Internet and online comments, expressed in natural...
Most of the recent researches have been carried out to analyse sentiment and emotions found in Engli...
Opinion mining in Arabic is a challenging task given the rich morphology of the language. The task b...
Recently, Sentiment Analysis applied to social media data has gradually become one of the significan...
Social media has recently become a rich resource in mining user sentiments. In this paper, Twitter h...
Abstract Currently, expressing feelings through social media requires great consideration as an esse...
Sentiment Analysis is achieved by using Natural Language Processing (NLP) techniques and finds wide ...
The increasing use of social media and the idea of extracting meaningful expressions from renewable ...
The rapid development of tools for communication such as social networks, tweeting and Whatsapp has ...
Arabic affect analysis on Twitter avidly helps to capture the emotional states of individuals being ...
The Arabic language has many spoken dialects. However, until recently, it was primarily written in M...
Arabic’s complex morphology, orthography, and dialects make sentiment analysis difficult. This activ...
Sentiment analysis (SA) refers as computational and natural language processing techniques used to e...
Arab users of social media have significantly increased, thus increasing the opportunities for extra...
With the vast increase of social media users over the past few years, millions of product reviews a...
International audienceIn recent years, the use of Internet and online comments, expressed in natural...
Most of the recent researches have been carried out to analyse sentiment and emotions found in Engli...
Opinion mining in Arabic is a challenging task given the rich morphology of the language. The task b...
Recently, Sentiment Analysis applied to social media data has gradually become one of the significan...
Social media has recently become a rich resource in mining user sentiments. In this paper, Twitter h...
Abstract Currently, expressing feelings through social media requires great consideration as an esse...
Sentiment Analysis is achieved by using Natural Language Processing (NLP) techniques and finds wide ...
The increasing use of social media and the idea of extracting meaningful expressions from renewable ...
The rapid development of tools for communication such as social networks, tweeting and Whatsapp has ...
Arabic affect analysis on Twitter avidly helps to capture the emotional states of individuals being ...
The Arabic language has many spoken dialects. However, until recently, it was primarily written in M...
Arabic’s complex morphology, orthography, and dialects make sentiment analysis difficult. This activ...
Sentiment analysis (SA) refers as computational and natural language processing techniques used to e...
Arab users of social media have significantly increased, thus increasing the opportunities for extra...
With the vast increase of social media users over the past few years, millions of product reviews a...