Corporate tax avoidance reduces government revenues which could limit country development plans. Thus, the main objectives of this study is to establish a rigorous and effective model to detect corporate tax avoidance to assist government to prevent such practice. This paper presents the fundamental knowledge on the design and implementation of machine learning model based on five selected algorithms tested on the real dataset of 3,365 Malaysian companies listed on bursa Malaysia from 2005 to 2015. The performance of each machine learning algorithms on the tested dataset has been observed based on two approaches of training. The accuracy score for each algorithm is better with the cross-validation training approach. Additionationally, with ...
In this thesis we investigate whether unsupervised and semisupervised machine learning methods can ...
As it is urgent to change the traditional audit sampling method that is based on manpower to meet th...
This study aims to examine the predictive power of tax aggressiveness using neural network and logis...
Applications of machine learning (ML) and data science have extended significantly into contemporary...
This paper addresses the performances of machine learning classification models for the detection of...
The field of digital economy income tax compliance is still in its infancy. The limited collection o...
Project Work presented as the partial requirement for obtaining a Master's degree in Information Man...
The planning and execution of a business strategy are important aspects of the strategic human resou...
This paper proposes a decision support system to predict corporate tax arrears by using tax arrears ...
The purpose of this dissertation was to study why corporate fraud detection models are often met wit...
This study aims to implement a machine learning algorithm in detecting fraud based on historical dat...
There are several areas that can be applied the machine learning techniques, one of which is the fin...
The tax history of a company is used to predict corporate bankruptcies using Bayesian inference. Our...
The collection of taxes is vital in contributing towards the revenue of a country. From the perspect...
Most of the existing research on enterprise tax arrears prediction is based on the financial situati...
In this thesis we investigate whether unsupervised and semisupervised machine learning methods can ...
As it is urgent to change the traditional audit sampling method that is based on manpower to meet th...
This study aims to examine the predictive power of tax aggressiveness using neural network and logis...
Applications of machine learning (ML) and data science have extended significantly into contemporary...
This paper addresses the performances of machine learning classification models for the detection of...
The field of digital economy income tax compliance is still in its infancy. The limited collection o...
Project Work presented as the partial requirement for obtaining a Master's degree in Information Man...
The planning and execution of a business strategy are important aspects of the strategic human resou...
This paper proposes a decision support system to predict corporate tax arrears by using tax arrears ...
The purpose of this dissertation was to study why corporate fraud detection models are often met wit...
This study aims to implement a machine learning algorithm in detecting fraud based on historical dat...
There are several areas that can be applied the machine learning techniques, one of which is the fin...
The tax history of a company is used to predict corporate bankruptcies using Bayesian inference. Our...
The collection of taxes is vital in contributing towards the revenue of a country. From the perspect...
Most of the existing research on enterprise tax arrears prediction is based on the financial situati...
In this thesis we investigate whether unsupervised and semisupervised machine learning methods can ...
As it is urgent to change the traditional audit sampling method that is based on manpower to meet th...
This study aims to examine the predictive power of tax aggressiveness using neural network and logis...