The aim of anomaly detection is to find patterns or data points that are not confirming the expected behavior inside the dataset. Techniques from a variety of disciplines like machine learning, statistics, information theory and data mining are used to solve this problem. The form of input data from stock market is a non-linear complex time series. Hence, the statistical methods in this case will be ineffective. Using the behavior of similar time series for detecting anomalies in Qatar stock exchange and American stock market index (Standard Poor (SP)) is the main goal of this paper. Supervised learning techniques were used extensively in detecting stock market manipulation. The problem of supervised learning techniques is that they require...
Detecting anomalies in time series data is important in a variety of fields, including system monito...
Anomaly detection has become a crucial part of the protection of information and integrity. Due to t...
In this thesis we propose a new form of Variational Autoencoder called the Conditional Latent Space ...
The financial markets are no longer what they used to be and one reason for this is the breakthrough...
Stock trading is a very complex topic that involves a lot of challenging problems. One of these prob...
Detecting stock price manipulation is a cat-and-mouse game. Manipulators have constantly devised new...
Information that allows better understanding of the situation in the financial markets and a timely ...
Time series clustering and anomaly detection provide researches with useful domain insights but are ...
This chapter aims to provide a comprehensive survey of the current advanced technologies of exceptio...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
International audienceData mining has become an important task for researchers in the past few years...
Business applications make extensive usage of time series analysis for the most diverse tasks. By an...
As a financial asset, cryptocurrencies innovated the financial industry in different ways. However, ...
The stock price is a culmination of numerous factors that are not necessarily quantifiable and signi...
Anomaly detection is a crucial task that has attracted the interest of several research studies in m...
Detecting anomalies in time series data is important in a variety of fields, including system monito...
Anomaly detection has become a crucial part of the protection of information and integrity. Due to t...
In this thesis we propose a new form of Variational Autoencoder called the Conditional Latent Space ...
The financial markets are no longer what they used to be and one reason for this is the breakthrough...
Stock trading is a very complex topic that involves a lot of challenging problems. One of these prob...
Detecting stock price manipulation is a cat-and-mouse game. Manipulators have constantly devised new...
Information that allows better understanding of the situation in the financial markets and a timely ...
Time series clustering and anomaly detection provide researches with useful domain insights but are ...
This chapter aims to provide a comprehensive survey of the current advanced technologies of exceptio...
University of Technology, Sydney. Faculty of Engineering and Information Technology.NO FULL TEXT AVA...
International audienceData mining has become an important task for researchers in the past few years...
Business applications make extensive usage of time series analysis for the most diverse tasks. By an...
As a financial asset, cryptocurrencies innovated the financial industry in different ways. However, ...
The stock price is a culmination of numerous factors that are not necessarily quantifiable and signi...
Anomaly detection is a crucial task that has attracted the interest of several research studies in m...
Detecting anomalies in time series data is important in a variety of fields, including system monito...
Anomaly detection has become a crucial part of the protection of information and integrity. Due to t...
In this thesis we propose a new form of Variational Autoencoder called the Conditional Latent Space ...