1. bookVolume 62 (2016): Issue 1 (March 2016)
Journal Details
First Published
22 Feb 2015
Publication timeframe
4 times per year
Open Access

Capabilities of Statistical Residual-Based Control Charts in Short- and Long-Term Stock Trading

Published Online: 19 Mar 2016
Volume & Issue: Volume 62 (2016) - Issue 1 (March 2016)
Page range: 12 - 26
Received: 01 Oct 2015
Accepted: 01 Feb 2016
Journal Details
First Published
22 Feb 2015
Publication timeframe
4 times per year

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