Automatic identification of influential segments from a large amount of data is an important part of topic detection and tracking (TDT). This can be done using keyword identification via collocation techniques, word co-occurrence networks, topic modeling and other machine learning techniques. This paper reviews existing traditional keyword extraction techniques and analyzes them to make useful insights and to give future directions for better automatic, unsupervised and language independent research. The paper reviews extant literature on existing traditional TDT approaches for automatic identification of influential segments from a large amount of data in keyword detection task. The current keyword detection techniques used by researchers ...
Abstract — Text mining is a field that automatically extracts previously unknown and useful informa...
The article discusses the evaluation of automatic keyword extraction algorithms (AKEA) and points ou...
Abstract: The presented paper describes statistical methods (information gain, mutual LQIRUPDWLRQ Ȥ...
Automatic identification of influential segments from a large amount of data is an important part of...
We present an unsupervised method for the generation from a textual corpus of sets of keywords, that...
The (unheralded) first step in many applications of automated text analysis involves selecting keywo...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
The main goal of this work is to survey the field of the automatic keywords tagging in a text and ap...
This article discusses methods and algorithms for keyword extraction in text mining. It classifies k...
The (unheralded) first step in many applications of automated text analysis involves selecting keywo...
The extraction of high-quality keywords and sum-marising documents at a high level has become more d...
The paper surveys methods and approaches for the task of keyword extraction. The systematic review o...
With the pervasion of digital textual data, text mining is becoming more and more important to deriv...
This paper collects research papers on knowledge engineering 2009-2018 from the internationally-auth...
The production and publication of scientific works have increased significantly in the last years, b...
Abstract — Text mining is a field that automatically extracts previously unknown and useful informa...
The article discusses the evaluation of automatic keyword extraction algorithms (AKEA) and points ou...
Abstract: The presented paper describes statistical methods (information gain, mutual LQIRUPDWLRQ Ȥ...
Automatic identification of influential segments from a large amount of data is an important part of...
We present an unsupervised method for the generation from a textual corpus of sets of keywords, that...
The (unheralded) first step in many applications of automated text analysis involves selecting keywo...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
The main goal of this work is to survey the field of the automatic keywords tagging in a text and ap...
This article discusses methods and algorithms for keyword extraction in text mining. It classifies k...
The (unheralded) first step in many applications of automated text analysis involves selecting keywo...
The extraction of high-quality keywords and sum-marising documents at a high level has become more d...
The paper surveys methods and approaches for the task of keyword extraction. The systematic review o...
With the pervasion of digital textual data, text mining is becoming more and more important to deriv...
This paper collects research papers on knowledge engineering 2009-2018 from the internationally-auth...
The production and publication of scientific works have increased significantly in the last years, b...
Abstract — Text mining is a field that automatically extracts previously unknown and useful informa...
The article discusses the evaluation of automatic keyword extraction algorithms (AKEA) and points ou...
Abstract: The presented paper describes statistical methods (information gain, mutual LQIRUPDWLRQ Ȥ...