Social media are becoming an increasingly important source of information about the public mood regarding issues such as elections, Brexit, stock market, etc. In this paper we focus on sentiment classification of Twitter data. Construction of sentiment classifiers is a standard text mining task, but here we address the question of how to properly evaluate them as there is no settled way to do so. Sentiment classes are ordered and unbalanced, and Twitter produces a stream of time-ordered data. The problem we address concerns the procedures used to obtain reliable estimates of performance measures, and whether the temporal ordering of the training and test data matters. We collected a large set of 1.5 million tweets in 13 European languages. ...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The spread of Covid-19 has resulted in worldwide health concerns. Social media is increasingly used ...
Abstract—Sentiment classification has become a ubiq-uitous enabling technology in the Twittersphere,...
Sentiment analysis plays a significant role in understanding public opinion, trends, and sentiments ...
Sentiment quantification is the task of training, by means of supervised learning, estimators of the...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
Twitter is a highly popular social networking service and a web-based communication platform with mi...
The dataset contains over 1.6 million tweets (tweet IDs), labeled with sentiment by human annotators...
Background: Twitter, Facebook, WordPress, etc. act as the major sources of information exchange in t...
Twitter has become a unique platform for social interaction from people all around the world, leadin...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
Twitter has become one of the most popular micro blogging platforms recently. Near about 800 Million...
In this report, address the problem of sentiment classification on twitter dataset. used a number of...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The spread of Covid-19 has resulted in worldwide health concerns. Social media is increasingly used ...
Abstract—Sentiment classification has become a ubiq-uitous enabling technology in the Twittersphere,...
Sentiment analysis plays a significant role in understanding public opinion, trends, and sentiments ...
Sentiment quantification is the task of training, by means of supervised learning, estimators of the...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
Twitter is a highly popular social networking service and a web-based communication platform with mi...
The dataset contains over 1.6 million tweets (tweet IDs), labeled with sentiment by human annotators...
Background: Twitter, Facebook, WordPress, etc. act as the major sources of information exchange in t...
Twitter has become a unique platform for social interaction from people all around the world, leadin...
People often use social media as an outlet for their emotions and opinions. Analysing social media t...
This paper covers the two approaches for sentiment analysis: i) lexicon based method; ii) machine le...
Twitter has become one of the most popular micro blogging platforms recently. Near about 800 Million...
In this report, address the problem of sentiment classification on twitter dataset. used a number of...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
The spread of Covid-19 has resulted in worldwide health concerns. Social media is increasingly used ...