Transforming natural language requirements into entities involves a thorough study of natural language text. Sometimes mistakes are made by designers when manually performing this transformation. Often, the process is time-consuming and inaccurate. Hence, multiple research studies have been performed to assist inexperienced designers in mapping a natural language text into entities and reducing the time and error that such a method entails. This work is part of those studies. Human intervention is a significant constraint for prior studies. In this paper, machine learning classifiers are used to eliminate human intervention. The system performs well in predicting entities and has achieved 85%, 75% and 80% for recall, precision and the F-sco...
Entity Linking, a vital component of Natural Language Processing (NLP), aims to link named entities ...
This paper introduces Named Entity Recognition approach for text corpus. Supervised Statistical meth...
Text classification is the most vital area in natural language processing in which text data is auto...
Machine Learning is described in today’s Information Technology world as one of the most promising r...
Abstract. This thesis examines the use of machine learning techniques in various tasks of natural la...
ABSTRACT: Named-entity recognition involves the identification and classification of named entities ...
Within a situation where Semi-Supervised Learning (SSL) is available to exploit unlabeled data, this...
In this paper, we propose the application of Machine Learning (ML) methods to the Semantic Web (SW) ...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
After becoming familiar with preparing text data in different formats and training different algorit...
Unsupervised learning text representations aims at converting natural languages into vector represen...
In this report, some collaborative work between the fields of Machine Learning (ML) and Natural Lang...
In this paper, we present a number of experiments on the construction of fine-grained and out-of-con...
Named Entity Recognition (NER) plays a significant role in enhancing the performance of all types of...
Entity Linking, a vital component of Natural Language Processing (NLP), aims to link named entities ...
This paper introduces Named Entity Recognition approach for text corpus. Supervised Statistical meth...
Text classification is the most vital area in natural language processing in which text data is auto...
Machine Learning is described in today’s Information Technology world as one of the most promising r...
Abstract. This thesis examines the use of machine learning techniques in various tasks of natural la...
ABSTRACT: Named-entity recognition involves the identification and classification of named entities ...
Within a situation where Semi-Supervised Learning (SSL) is available to exploit unlabeled data, this...
In this paper, we propose the application of Machine Learning (ML) methods to the Semantic Web (SW) ...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
After becoming familiar with preparing text data in different formats and training different algorit...
Unsupervised learning text representations aims at converting natural languages into vector represen...
In this report, some collaborative work between the fields of Machine Learning (ML) and Natural Lang...
In this paper, we present a number of experiments on the construction of fine-grained and out-of-con...
Named Entity Recognition (NER) plays a significant role in enhancing the performance of all types of...
Entity Linking, a vital component of Natural Language Processing (NLP), aims to link named entities ...
This paper introduces Named Entity Recognition approach for text corpus. Supervised Statistical meth...
Text classification is the most vital area in natural language processing in which text data is auto...