Though the strong evolution of knowledge learning models has characterized the last few years, the explanation of a phenomenon from text documents, called descriptive text mining, is still a difficult and poorly addressed problem. The need to work with unlabeled data, explainable approaches, unsupervised and domain independent solutions further increases the complexity of this task. Currently, existing techniques only partially solve the problem and have several limitations. In this paper, we propose a novel methodology of descriptive text mining, capable of offering accurate explanations in unsupervised settings and of quantifying the results based on their statistical significance. Considering the strong growth of patient communities on s...
Our nursing fields put most of our efforts into elucidation of tacit knowledge. It greatly assists t...
AbstractSocial Networks are powerful social media for sharing information about various issues and c...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...
Though the strong evolution of knowledge learning models has characterized the last few years, the e...
The use of knowledge graphs (KGs) in advanced applications is constantly growing, as a consequence o...
Rare diseases pose particular challenges to patients, families, caregivers, clinicians and researche...
Abstract-Text mining is nothing but extracting useful information from text. The information to be e...
Researchers on social-media understandably assert that the contributions social media has made on va...
Text mining or information discovery is that sub manner of information mining that is extensively be...
Background and objective: Classifying people according to their health profile is crucial in order t...
[EN] Current text mining applications statistically work on the basis of linguistic models and theor...
The Internet provides an alternative way to share health information. Specifically, social network s...
Text mining research paper is a scientific study that focuses on the development and application of ...
Objective: We present a system developed for the Challenge in Natural Language Processing for Clinic...
Supervised machine learning on textual data has successful industrial/business applications, but it ...
Our nursing fields put most of our efforts into elucidation of tacit knowledge. It greatly assists t...
AbstractSocial Networks are powerful social media for sharing information about various issues and c...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...
Though the strong evolution of knowledge learning models has characterized the last few years, the e...
The use of knowledge graphs (KGs) in advanced applications is constantly growing, as a consequence o...
Rare diseases pose particular challenges to patients, families, caregivers, clinicians and researche...
Abstract-Text mining is nothing but extracting useful information from text. The information to be e...
Researchers on social-media understandably assert that the contributions social media has made on va...
Text mining or information discovery is that sub manner of information mining that is extensively be...
Background and objective: Classifying people according to their health profile is crucial in order t...
[EN] Current text mining applications statistically work on the basis of linguistic models and theor...
The Internet provides an alternative way to share health information. Specifically, social network s...
Text mining research paper is a scientific study that focuses on the development and application of ...
Objective: We present a system developed for the Challenge in Natural Language Processing for Clinic...
Supervised machine learning on textual data has successful industrial/business applications, but it ...
Our nursing fields put most of our efforts into elucidation of tacit knowledge. It greatly assists t...
AbstractSocial Networks are powerful social media for sharing information about various issues and c...
Millions of patients are hospitalised each year because of Adverse Drug Reactions, and researchers a...