The recent advent and evolution of deep learning models and pre-trained embedding techniques have created a breakthrough in supervised learning. Typically, we expect that adding more labeled data improves the predictive performance of supervised models. On the other hand, collecting more labeled data is not an easy task due to several difficulties, such as manual labor costs, data privacy, and computational constraint. Hence, a comprehensive study on the relation between training set size and the classification performance of different methods could be essentially useful in the selection of a learning model for a specific task. However, the literature lacks such a thorough and systematic study. In this paper, we concentrate on this relation...
The access of machine learning techniques in popular programming languages and the exponentially exp...
Word embeddings and convolutional neural networks (CNN) have attracted extensive attention in vario...
Twitter represents a massively distributed information source over a kaleidoscope of topics ranging ...
The recent advent and evolution of deep learning models and pre-trained embedding techniques have cr...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
Automatic hashtag segmentation is used when analysing twitter data, to associate hashtag terms to th...
Recognizing speech act types in Twitter is of much theoretical interest and practical use. Our previ...
This repository contains the manuscript of my Ph.D. dissertation. Here is the abstract of the manusc...
Over the last years, many papers have been published about how to use machine learning for classifyi...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
Abstract—Over the last years, many papers have been published about how to use machine learning for ...
© 2020 Elsevier Inc. The access of machine learning techniques in popular programming languages and ...
In the real world, data used to build machine learning models always has different sizes and charact...
In the real world, data used to build machine learning models always has different sizes and charact...
The access of machine learning techniques in popular programming languages and the exponentially exp...
Word embeddings and convolutional neural networks (CNN) have attracted extensive attention in vario...
Twitter represents a massively distributed information source over a kaleidoscope of topics ranging ...
The recent advent and evolution of deep learning models and pre-trained embedding techniques have cr...
Twitter and other microblogging services are a valuable source for almost real-time marketing, publi...
Automatic hashtag segmentation is used when analysing twitter data, to associate hashtag terms to th...
Recognizing speech act types in Twitter is of much theoretical interest and practical use. Our previ...
This repository contains the manuscript of my Ph.D. dissertation. Here is the abstract of the manusc...
Over the last years, many papers have been published about how to use machine learning for classifyi...
The goal of this master thesis is to classify short Twitter messages with respect to their sentiment...
In the big data era, data is made in real-time or closer to real-time. Thus, businesses can utilize ...
Abstract—Over the last years, many papers have been published about how to use machine learning for ...
© 2020 Elsevier Inc. The access of machine learning techniques in popular programming languages and ...
In the real world, data used to build machine learning models always has different sizes and charact...
In the real world, data used to build machine learning models always has different sizes and charact...
The access of machine learning techniques in popular programming languages and the exponentially exp...
Word embeddings and convolutional neural networks (CNN) have attracted extensive attention in vario...
Twitter represents a massively distributed information source over a kaleidoscope of topics ranging ...