Title
Sarcastic sentiment detection in tweets streamed in real time: a big data approach
Abstract
Sarcasm is a type of sentiment where people express their negative feelings using positive or intensified positive words in the text. While speaking, people often use heavy tonal stress and certain gestural clues like rolling of the eyes, hand movement, etc. to reveal sarcastic. In the textual data, these tonal and gestural clues are missing, making sarcasm detection very difficult for an average human. Due to these challenges, researchers show interest in sarcasm detection of social media text, especially in tweets. Rapid growth of tweets in volume and its analysis pose major challenges. In this paper, we proposed a Hadoop based framework that captures real time tweets and processes it with a set of algorithms which identifies sarcastic sentiment effectively. We observe that the elapse time for analyzing and processing under Hadoop based framework significantly outperforms the conventional methods and is more suited for real time streaming tweets.
Year
DOI
Venue
2016
10.1016/j.dcan.2016.06.002
Digital Communications and Networks
Keywords
DocType
Volume
Big data,Flume,Hadoop,Hive,MapReduce,Sarcasm,Sentiment,Tweets
Journal
2
Issue
ISSN
Citations 
3
2352-8648
2
PageRank 
References 
Authors
0.41
0
5
Name
Order
Citations
PageRank
Santosh Kumar Bharti1112.40
B. Vachha220.41
Ramkrushna Pradhan330.80
Korra Sathya Babu43610.34
Sanjay Kumar Jena510114.37