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   	<dc:title>Comparing the behaviors of some original short  and long memory exponential volatility models</dc:title>
   	<dc:creator>Hanke, Dominik Christian</dc:creator>
   	<dc:creator>Feng, Yuanhua</dc:creator>
   	<dc:creator>Uhde, André</dc:creator>
   	<dc:subject>Modulus Log-GARCH</dc:subject>
   	<dc:subject>Modified (FI)EGARCH</dc:subject>
   	<dc:subject>Modulus asymmetric (FI)Log-GARCH</dc:subject>
   	<dc:subject>(FI)EGARCH</dc:subject>
   	<dc:subject>long memory</dc:subject>
   	<dc:subject>modulus-log transformation</dc:subject>
   	<dc:subject>QMLE</dc:subject>
   	<dc:subject>model selection</dc:subject>
   	<dc:subject>implementation in  R</dc:subject>
   	<dc:subject>ddc:330</dc:subject>
   	<dc:description>Volatility modeling is utilized across numerous fields including finance, environmental studies, and 
social sciences. It is particularly relevant in scenarios where understanding and predicting conditional 
variability is crucial, such as when dealing with incremental or time-dependent data. In this paper, novel 
short and long memory volatility models of the EGARCH family are introduced and analyzed, which 
are closely related to the well-established EGARCH model proposed by Nelson (1991) but share 
desirable theoretical properties in several dimensions. Recently developed members of the so-called 
EGARCH family, which introduces a modulus-log transformation proposed by John and Draper (1980) 
and a power transformation for the size and magnitude effect to tackle the problem with near-zero 
innovations and the asymmetric impact of positive and negative shocks on the volatility, are discussed. 
After a theoretical discussion of the proposed and related volatility models, the practical performance 
of the elaborated volatility models is compared to well-established and traditional GARCH approaches. 
A general QMLE algorithm is proposed to estimate the model parameters. The practical relevance of the 
advanced models is illustrated through a comparative study. By applying these volatility models to a 
variety of international stock index returns, this paper identifies market-specific characteristics as well 
as unique strengths and weaknesses of discussed volatility models. Although the practical performance 
of the recently introduced models is comparable to those obtained by the traditional EGARCH model, 
they generally outperform traditional non-exponential volatility models used as benchmarks and thus 
provide a useful alternative to existing short and long memory volatility models. </dc:description>
   	<dc:date>2026</dc:date>
   	<dc:type>info:eu-repo/semantics/workingPaper</dc:type>
   	<dc:type>doc-type:workingPaper</dc:type>
   	<dc:type>text</dc:type>
   	<dc:type>http://purl.org/coar/resource_type/c_8042</dc:type>
   	<dc:identifier>https://ris.uni-paderborn.de/record/66447</dc:identifier>
   	<dc:identifier>https://ris.uni-paderborn.de/download/66447/66448</dc:identifier>
   	<dc:source>Hanke DC, Feng Y, Uhde A. &lt;i&gt;Comparing the Behaviors of Some Original Short  and Long Memory Exponential Volatility Models&lt;/i&gt;.; 2026.</dc:source>
   	<dc:language>eng</dc:language>
   	<dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
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