With an increasing amount of information on the internet, automatic text summarization could potentially make content more readily available for a larger variety of people. Training and evaluating text summarization models require datasets of sufficient size and quality. Today, most such datasets are in English, and for minor languages such as Swedish, it is not easy to obtain corresponding datasets with handwritten summaries. This thesis proposes methods for compiling high-quality datasets suitable for abstractive summarization from a large amount of noisy data through characterization and filtering. The data used consists of Swedish news articles and their preambles which are here used as summaries. Different filtering techniques are appl...
The advancements in abstractive summarization using Large Language Models (LLMs) have brought with i...
Extractive text summarization has over the years been an important research area in Natural Language...
Extractive text summarization has over the years been an important research area in Natural Language...
Developments in deep learning and machine learning overall has created a plethora of opportunities f...
Developments in deep learning and machine learning overall has created a plethora of opportunities f...
With an increasing amount of textual information available there is also an increased need to make t...
With an increasing amount of textual information available there is also an increased need to make t...
The task of summarization can be categorized into two methods, extractive and abstractive. Extractiv...
Automatic text summarization has emerged as a promising solution to manage the vast amount of inform...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Automatic summarization aims to reduce an input document to a compressed version that captures only ...
In recent years, the volume of textual data has rapidly increased, which has generated a valuable re...
Text summarization is an established sequence learning problem divided into extractive and abstracti...
The advancements in abstractive summarization using Large Language Models (LLMs) have brought with i...
Extractive text summarization has over the years been an important research area in Natural Language...
Extractive text summarization has over the years been an important research area in Natural Language...
Developments in deep learning and machine learning overall has created a plethora of opportunities f...
Developments in deep learning and machine learning overall has created a plethora of opportunities f...
With an increasing amount of textual information available there is also an increased need to make t...
With an increasing amount of textual information available there is also an increased need to make t...
The task of summarization can be categorized into two methods, extractive and abstractive. Extractiv...
Automatic text summarization has emerged as a promising solution to manage the vast amount of inform...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Abstractive text summarization aims to condense long textual documents into a short, human-readable ...
Automatic summarization aims to reduce an input document to a compressed version that captures only ...
In recent years, the volume of textual data has rapidly increased, which has generated a valuable re...
Text summarization is an established sequence learning problem divided into extractive and abstracti...
The advancements in abstractive summarization using Large Language Models (LLMs) have brought with i...
Extractive text summarization has over the years been an important research area in Natural Language...
Extractive text summarization has over the years been an important research area in Natural Language...