With the great growth of open forums online where anyone can givetheir opinion on everything, the Internet has become a place wherepeople are trying to mislead others. By assuming that there is acorrelation between a deceptive text's purpose and the way to writethe text, our goal with this thesis was to develop a model fordetecting these fake texts by taking advantage of this correlation.Our approach was to use classification together with threedifferent feature types, term frequency-inverse document frequency,word2vec and probabilistic context-free grammar. We have managed todevelop a model which have improved all, to us known, results for twodifferent datasets.With machine translation, we have detected that there is apossibility to hide t...
Online reviews have a substantial impact on decision making in various areas of society, predominant...
In the present day scenario, individuals or decision makers in any organization are very much influe...
In this study we aim to explore automatic methods that can detect online documents of low credibilit...
With the great growth of open forums online where anyone can givetheir opinion on everything, the In...
The temptation to influence and sway public opinion most certainly increases with the growth of open...
The advancement of the Internet has changed people’s ways of expressing and sharing their views with...
Identifying deceptive online reviews is a challenging tasks for Natural Language Processing (NLP). C...
Thesis (Master's)--University of Washington, 2015With the explosion of online shopping sites, there ...
In the era of Web 2.0, huge volumes of consumer reviews are posted to the Internet every day. Manual...
Deceptive opinion classification has attracted a lot of research interest due to the rapid growth of...
This work goes through the study of deception in psychology, forensic sciences and language technolo...
This research demonstrates how to use deep learning techniques alongside corpus generation and onlin...
Consumers increasingly rely on user-generated online reviews when making purchase decisions. However...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
The issue of fake online reviews is increasingly relevant due to the growing importance of online re...
Online reviews have a substantial impact on decision making in various areas of society, predominant...
In the present day scenario, individuals or decision makers in any organization are very much influe...
In this study we aim to explore automatic methods that can detect online documents of low credibilit...
With the great growth of open forums online where anyone can givetheir opinion on everything, the In...
The temptation to influence and sway public opinion most certainly increases with the growth of open...
The advancement of the Internet has changed people’s ways of expressing and sharing their views with...
Identifying deceptive online reviews is a challenging tasks for Natural Language Processing (NLP). C...
Thesis (Master's)--University of Washington, 2015With the explosion of online shopping sites, there ...
In the era of Web 2.0, huge volumes of consumer reviews are posted to the Internet every day. Manual...
Deceptive opinion classification has attracted a lot of research interest due to the rapid growth of...
This work goes through the study of deception in psychology, forensic sciences and language technolo...
This research demonstrates how to use deep learning techniques alongside corpus generation and onlin...
Consumers increasingly rely on user-generated online reviews when making purchase decisions. However...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
The issue of fake online reviews is increasingly relevant due to the growing importance of online re...
Online reviews have a substantial impact on decision making in various areas of society, predominant...
In the present day scenario, individuals or decision makers in any organization are very much influe...
In this study we aim to explore automatic methods that can detect online documents of low credibilit...