We present the architecture of a “useful pattern” mining system that is capable of detecting thousands of different candlestick sequence patterns at the tick or any higher granularity levels. The system architecture is highly distributed and performs most of its highly compute-intensive aggregation calculations as complex but efficient distributed SQL queries on the relational databases that store the time-series. We present initial results from mining all frequent candlestick sequences with the characteristic property that when they occur then, with an average at least 60% probability, they signal a 2% or higher increase (or, alternatively, decrease) in a chosen property of the stock (e.g. close-value) within a given time-window (e.g. 5 da...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
The stock market is an integral aspect of any country’s economic infrastructure. Analyzing and attem...
Stock data in the form of multiple time series are difficult to process, analyze and mine. However, ...
There is a widespread belief that certain patterns of stock prices over time portend specific future...
AbstractWe present the architecture of a complete intraday trading management system using a stock s...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering association rules can reveal the cause-effect relationships among events in a time-serie...
AbstractWe present the architecture of a complete intraday trading management system using a stock s...
Abstract—Timely identification of newly emerging trends is needed in business process. Data mining t...
Data collecting and analysis are commonly used techniques in many sectors of today's business and sc...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
Periodic pattern detection in time-ordered sequences is an important data mining task, which discove...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
The stock market is an integral aspect of any country’s economic infrastructure. Analyzing and attem...
Stock data in the form of multiple time series are difficult to process, analyze and mine. However, ...
There is a widespread belief that certain patterns of stock prices over time portend specific future...
AbstractWe present the architecture of a complete intraday trading management system using a stock s...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering patterns and relationships in the stock market has been widely researched for many years...
Discovering association rules can reveal the cause-effect relationships among events in a time-serie...
AbstractWe present the architecture of a complete intraday trading management system using a stock s...
Abstract—Timely identification of newly emerging trends is needed in business process. Data mining t...
Data collecting and analysis are commonly used techniques in many sectors of today's business and sc...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
Periodic pattern detection in time-ordered sequences is an important data mining task, which discove...
Time series data poses a significant variation to the traditional segmentation techniques of data mi...
The stock market is an integral aspect of any country’s economic infrastructure. Analyzing and attem...
Stock data in the form of multiple time series are difficult to process, analyze and mine. However, ...