1. bookVolume 9 (2018): Issue 2 (July 2018)
Journal Details
First Published
19 Sep 2012
Publication timeframe
2 times per year
Open Access

Neural Network Approach in Forecasting Realized Variance Using High-Frequency Data

Published Online: 28 Jul 2018
Volume & Issue: Volume 9 (2018) - Issue 2 (July 2018)
Page range: 18 - 34
Received: 29 Jan 2018
Accepted: 21 Apr 2018
Journal Details
First Published
19 Sep 2012
Publication timeframe
2 times per year

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