DocumentCode :
3589212
Title :
Inter — Transactional pattern discovery applying comparative apriori and modified reverse apriori approach
Author :
Saxena, Priti ; Pant, Bhaskar ; Goudar, R.H.
fYear :
2014
Firstpage :
300
Lastpage :
305
Abstract :
In this paper, a pattern trend-based data mining approach has been proposed which convert the numeric stock data to symbolic notations, carries out association analysis through comparative study of apriori and proposed modified reverse apriori concepts and further applies the mined rules in predicting the movement of prices. Application of modified reverse apriori has shown drastic reduction in the number of scans. The apriori covers 105scans in performing the evaluation whereas the applied modified reverse apriori covers the same in just 28 scans which is a surprising result. The initial formulation is based on inter-stock mining. The execution time is also evaluated and observed that modified reverse apriori takes less execution time as compared to apriori. There is a roughly 5221 milliseconds (approx) of difference between the both. A comparative study is shown along with the discovery of important pattern trends which shows the investing benefits for the clients in the stock market. This provides a very significant way of evaluating the position of the stocks i.e the highest selling and lowest selling stocks on a day basis. The result shows a huge difference in the number of scans which is the main motive of this study.
Keywords :
data mining; pricing; stock markets; association analysis; comparative apriori approach; interstock mining; intertransactional pattern discovery; modified reverse apriori approach; numeric stock data; pattern trend-based data mining approach; price prediction; stock market; Association rules; Companies; Conferences; Databases; Market research; Stock markets; Trend; apriori; execution time; modified reverse apriori; scans; stock price;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Intelligent Systems and Control (ISCO), 2014 IEEE 8th International Conference on
Print_ISBN :
978-1-4799-3836-0
Type :
conf
DOI :
10.1109/ISCO.2014.7103964
Filename :
7103964
Link To Document :
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