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FORECASTING VOLATILITY SWITCHING ARCH BY TREED GAUSSIAN PROCESS WITH JUMPS TO THE LIMITING LINEAR MODEL
Phichhang Ou and Hengshan Wang
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Abstract
DOI:
10.2316/Journal.202.2011.4.202-3260
From Journal
(202) International Journal of Computers and Applications - 2011
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