Semi-supervised learning defines the techniques that fall in between supervised and unsupervised learning. It is commonly used in classification settings where one has a lesser amount of labeled data compared to unlabeled. The goal is to extract extra learning from the unlabeled data to improve on the supervised classification. We will explore some of the approaches to semi-supervised learning to improve on the classification of Nordic news articles in the corpus provided. We will be exploring the methods of self-training in several different configurations and methods of feature extraction and engineering. We will also provide some background and baseline using common supervised methods for improving results as well as different document ...
Traditional supervised classification algorithms require a large number of labelled examples to perf...
As the amount of online document increases, the demand for document classification to aid the analys...
The goal of the proposed research is to explore semantic learning in an artificial neural network tr...
Master's thesis in Computer scienceSemi-supervised learning defines the techniques that fall in betw...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
Nowadays, the amount of news has increased every day. They also grow rapidly. This sit-uation makes ...
Semi-supervised learning is the class of machine learning that deals with the use of supervised and ...
The continuous increase of digital documents on the web creates the need to search for information p...
Semi-supervised learning is the learning setting in which we have both labeled and unlabeled data at...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Supervised machine learning is a branch of artificial intelligence concerned with learning computer ...
Within a situation where Semi-Supervised Learning (SSL) is available to exploit unlabeled data, this...
The cluster assumption is exploited by most semi-supervised learning (SSL) meth-ods. However, if the...
Supervised learning algorithms employ labeled training data for classification purposes while obtain...
Traditional supervised classification algorithms require a large number of labelled examples to perf...
As the amount of online document increases, the demand for document classification to aid the analys...
The goal of the proposed research is to explore semantic learning in an artificial neural network tr...
Master's thesis in Computer scienceSemi-supervised learning defines the techniques that fall in betw...
We review some of the literature on semi-supervised learning in this paper. Traditional classifiers ...
Nowadays, the amount of news has increased every day. They also grow rapidly. This sit-uation makes ...
Semi-supervised learning is the class of machine learning that deals with the use of supervised and ...
The continuous increase of digital documents on the web creates the need to search for information p...
Semi-supervised learning is the learning setting in which we have both labeled and unlabeled data at...
In the field of machine learning, semi-supervised learning (SSL) occupies the middle ground, between...
Semi Supervised Learning involves using both labeled and unlabeled data to train a classifier or for...
Supervised machine learning is a branch of artificial intelligence concerned with learning computer ...
Within a situation where Semi-Supervised Learning (SSL) is available to exploit unlabeled data, this...
The cluster assumption is exploited by most semi-supervised learning (SSL) meth-ods. However, if the...
Supervised learning algorithms employ labeled training data for classification purposes while obtain...
Traditional supervised classification algorithms require a large number of labelled examples to perf...
As the amount of online document increases, the demand for document classification to aid the analys...
The goal of the proposed research is to explore semantic learning in an artificial neural network tr...