Sentiment analysis (SA) is an enduring area for research especially in the field of text analysis. Text pre-processing is an important aspect to perform SA accurately. This paper presents a text processing model for SA, using natural language processing techniques for twitter data. The basic phases for machine learning are text collection, text cleaning, pre-processing, feature extractions in a text and then categorize the data according to the SA techniques. Keeping the focus on twitter data, the data is extracted in domain specific manner. In data cleaning phase, noisy data, missing data, punctuation, tags and emoticons have been considered. For pre-processing, tokenization is performed which is followed by stop word removal (SWR). The pr...
The growing popularity of social media sites has generated a massive amount of data that attracted r...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The monograph “Natural Language Processing for Sentiment Analysis in Social Media” makes a key contr...
Sentiment analysis (SA) is an enduring area for research especially in the field of text analysis. T...
AbstractUbiquitous nature of online social media and ever expending usage of short text messages bec...
Practical demands and academic challenges have both contributed to making sentiment analysis a thriv...
Practical demands and academic challenges have both contributed to making sentiment analysis a thriv...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
This research was funded by the Interreg 2 Seas Mers Zeeën AGE IN project (2S05-014).Peer reviewedPu...
Twitter sentiment analysis is one of the leading research fields. Most of the researchers were contr...
AbstractUbiquitous nature of online social media and ever expending usage of short text messages bec...
Examining sentiments in social media poses a challenge to natural language processing because of t...
Microblogging site Twitter (re-branded to X since July 2023) is one of the most influential online s...
Microblogging site Twitter (re-branded to X since July 2023) is one of the most influential online s...
The growing popularity of social media sites has generated a massive amount of data that attracted r...
The growing popularity of social media sites has generated a massive amount of data that attracted r...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The monograph “Natural Language Processing for Sentiment Analysis in Social Media” makes a key contr...
Sentiment analysis (SA) is an enduring area for research especially in the field of text analysis. T...
AbstractUbiquitous nature of online social media and ever expending usage of short text messages bec...
Practical demands and academic challenges have both contributed to making sentiment analysis a thriv...
Practical demands and academic challenges have both contributed to making sentiment analysis a thriv...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
This research was funded by the Interreg 2 Seas Mers Zeeën AGE IN project (2S05-014).Peer reviewedPu...
Twitter sentiment analysis is one of the leading research fields. Most of the researchers were contr...
AbstractUbiquitous nature of online social media and ever expending usage of short text messages bec...
Examining sentiments in social media poses a challenge to natural language processing because of t...
Microblogging site Twitter (re-branded to X since July 2023) is one of the most influential online s...
Microblogging site Twitter (re-branded to X since July 2023) is one of the most influential online s...
The growing popularity of social media sites has generated a massive amount of data that attracted r...
The growing popularity of social media sites has generated a massive amount of data that attracted r...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The monograph “Natural Language Processing for Sentiment Analysis in Social Media” makes a key contr...