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Testing the Market Efficiency in Crypto Currency Markets Using Long-Memory and Heteroscedasticity Tests

Yıl 2019, Cilt: 14 Sayı: 2, 491 - 510, 30.08.2019
https://doi.org/10.17153/oguiibf.520679

Öz

The purpose of this study is to shed light on the critical points of the
future of the crypto currency market by evaluating the price movements and
market efficiency. In this context, efficiency structure of the market has been
tested for long-memory and heteroscedasticity characteristics. The relationship
between market depth and volatility structure has been tested for 8 crypto
currencies using asymmetrical GARCH models. Results of the analysis indicate presence
of long-memory characteristics. Additionally, that as market volume increases
so does the efficiency of the market.
 Therefore,
it is concluded that the market efficiency increases with the market depth for
all tested crypto currencies. This study contributes to the literature by
pointing out the signals about the future of the crypto currency markets, which
is one of the most controversial issues in the current finance literature.

Kaynakça

  • Baillie, Richard T; Tim Bollerslev; Hans Ole Mikkelsen (1996), “Fractionally integrated generalized autoregressive conditional heteroskedasticity”, Journal of econometrics, Vol.74 No.1: 3-30.
  • Balcilar, Mehmet; Elie, Bouri; Rangan Gupta; David Roubaud (2017), “Can volume predict Bitcoin returns and volatility? A quantiles-based approach”, Economic Modelling, Vol.64 No.1: 74-81.
  • Barkoulas, John T; Christopher, F. Baum; Nickolaos Travlos (2000), “Long memory in the Greek stock market”, Applied Financial Economics, Vol. 10 No. 2: 177-84.
  • Bollerslev, Tim; Robert, F. Engle; Daniel B Nelson (1994), “ARCH models”, Handbook of econometrics, Vol. 4 No.1: 2959-3038.
  • Bollerslev, Tim; Hans, Ole, Mikkelsen (1996), “Modeling and pricing long memory in stock market volatility”, Journal of econometrics, Vol. 73 No.1: 151-84.
  • Burton, John (1987), “Privatization: the thatcher case”, Managerial and Decision Economics, Vol. 8 No.1: 21-29.
  • Cheah, Engtuck; John, Fry (2015), “Speculative bubbles in Bitcoin markets? An empirical investigation into the fundamental value of Bitcoin”, Economics Letters, Vol. 130 No.1: 32-36.
  • Cheung, Yin‐Wong; Kon, S. Lai (1993), “Finite‐sample sizes of Johansen’s likelihood ratio tests for cointegration”, Oxford Bulletin of Economics and statistics, Vol. 55 No.3: 313-28.
  • Cheung, Yin-Wong; Kon, S. Lai (1995), “A search for long memory in international stock market returns”, Journal of International Money and Finance, Vol.14 No.4: 597-615.
  • Ding, Zhuanxin; Clive, WJ. Granger; Robert, F. Engle (1993), “A long memory property of stock market returns and a new model”, Journal of empirical finance, Vol.1 No.1: 83-106.
  • Engle, Robert, F. (1982), “Autoregressive conditional heteroscedasticity with estimates of the variance of United Kingdom inflation”, Econometrica: Journal of the Econometric Society, Vol.1 No.1:987-1007.
  • Fama, Eugene, F. (1965a), “Portfolio analysis in a stable Paretian market”, Management science, Vol.11 No.3: 404-19.
  • Fama, Eugene, F. (1965b), “The behavior of stock-market prices”, The journal of Business, Vol.38 No.1: 34-105.
  • Fama, Eugene, F. (1970), “Efficient capital markets: A review of theory and empirical work”, The journal of Finance, Vol.25 No.2: 383-417.
  • Gandal, Neil; Hanna, Halaburda (2016), “Can we predict the winner in a market with network effects? Competition in cryptocurrency market”, Games, Vol. 7 No.3: 16.
  • Granger, Clive, WJ.; Roselyne, Joyeux (1980), “An introduction to long‐memory time series models and fractional differencing”, Journal of time series analysis, Vol.1 No.1: 15-29.
  • Hosking, Jonathan, RM. (1981), “Fractional differencing”, Biometrika, Vol.68 No.1: 165-76.
  • Kayalıdere, Koray; Hakan Aracı; Hüseyin Aktaş (2012), “Türev ve spot piyasalar arasındaki etkileşim: VOB üzerine bir inceleme”, Muhasebe ve Finansman Dergisi, C.56 S.1: 137-54.
  • Lahmiri, Salim (2015), “Long memory in international financial markets trends and short movements during 2008 financial crisis based on variational mode decomposition and detrended fluctuation analysis”, Physica A: Statistical Mechanics and its Applications, Vol.437 No.1: 130-38.
  • Mensi, Walid; Shawkat, Hammoudeh; Sang, Hoon, Kang (2015), “Precious metals, cereal, oil and stock market linkages and portfolio risk management: Evidence from Saudi Arabia”, Economic Modelling, Vol.51 No.1: 340-58.
  • Tse, Yiu Kuen; (1998), “The conditional heteroscedasticity of the yen-dollar exchange rate”, Journal of Applied Econometrics, Vol.1 No.1: 49-55.
  • Turgutlu, Evrim (2004), “Fisher hipotezinin tutarlılığının testi: parçalı durağanlık ve parçalı koentegrasyon analizi”, DEÜ İİBF Dergisi, C.19 S.2: 55-74.

Kripto Para Birimi Piyasalarında Etkinliğin Uzun Hafıza Ve Değişen Varyans Özelliklerinin Testi Yoluyla Analizi

Yıl 2019, Cilt: 14 Sayı: 2, 491 - 510, 30.08.2019
https://doi.org/10.17153/oguiibf.520679

Öz

Çalışmanın
amacı, kripto para birimi piyasalarındaki fiyat hareketlerini etkinlik
açısından değerlendirerek piyasanın geleceğine dair kritik noktalara ışık
tutmaktır. Bu kapsamda piyasa etkinliğine dair uzun hafıza ve değişen varyans
özellikleri test edilmiştir. Piyasa derinliği ve volatilite yapısı arasındaki
ilişki, 8 kripto para birimi için asimetrik GARCH modelleri kullanılarak
incelenmiştir. Analiz bulguları, kripto para piyasalarında uzun hafıza özelliğinin
varlığını ortaya koymaktadır. Buna ek olarak, elde edilen bulgulara göre, tüm
kripto para birimleri için işlem hacmi arttıkça volatilitede azalma gözlemlenmektedir.
Dolayısıyla, piyasa etkinliğinin tüm kripto para birimleri için piyasa
derinliğiyle birlikte arttığı sonucuna ulaşılmaktadır. Bu çalışma, güncel
finans literatürünün en tartışmalı konularından birisi olan kripto para piyasalarının
geleceğine dair sinyallere işaret etme aracılığıyla literatüre katkı
sağlamaktadır.

Kaynakça

  • Baillie, Richard T; Tim Bollerslev; Hans Ole Mikkelsen (1996), “Fractionally integrated generalized autoregressive conditional heteroskedasticity”, Journal of econometrics, Vol.74 No.1: 3-30.
  • Balcilar, Mehmet; Elie, Bouri; Rangan Gupta; David Roubaud (2017), “Can volume predict Bitcoin returns and volatility? A quantiles-based approach”, Economic Modelling, Vol.64 No.1: 74-81.
  • Barkoulas, John T; Christopher, F. Baum; Nickolaos Travlos (2000), “Long memory in the Greek stock market”, Applied Financial Economics, Vol. 10 No. 2: 177-84.
  • Bollerslev, Tim; Robert, F. Engle; Daniel B Nelson (1994), “ARCH models”, Handbook of econometrics, Vol. 4 No.1: 2959-3038.
  • Bollerslev, Tim; Hans, Ole, Mikkelsen (1996), “Modeling and pricing long memory in stock market volatility”, Journal of econometrics, Vol. 73 No.1: 151-84.
  • Burton, John (1987), “Privatization: the thatcher case”, Managerial and Decision Economics, Vol. 8 No.1: 21-29.
  • Cheah, Engtuck; John, Fry (2015), “Speculative bubbles in Bitcoin markets? An empirical investigation into the fundamental value of Bitcoin”, Economics Letters, Vol. 130 No.1: 32-36.
  • Cheung, Yin‐Wong; Kon, S. Lai (1993), “Finite‐sample sizes of Johansen’s likelihood ratio tests for cointegration”, Oxford Bulletin of Economics and statistics, Vol. 55 No.3: 313-28.
  • Cheung, Yin-Wong; Kon, S. Lai (1995), “A search for long memory in international stock market returns”, Journal of International Money and Finance, Vol.14 No.4: 597-615.
  • Ding, Zhuanxin; Clive, WJ. Granger; Robert, F. Engle (1993), “A long memory property of stock market returns and a new model”, Journal of empirical finance, Vol.1 No.1: 83-106.
  • Engle, Robert, F. (1982), “Autoregressive conditional heteroscedasticity with estimates of the variance of United Kingdom inflation”, Econometrica: Journal of the Econometric Society, Vol.1 No.1:987-1007.
  • Fama, Eugene, F. (1965a), “Portfolio analysis in a stable Paretian market”, Management science, Vol.11 No.3: 404-19.
  • Fama, Eugene, F. (1965b), “The behavior of stock-market prices”, The journal of Business, Vol.38 No.1: 34-105.
  • Fama, Eugene, F. (1970), “Efficient capital markets: A review of theory and empirical work”, The journal of Finance, Vol.25 No.2: 383-417.
  • Gandal, Neil; Hanna, Halaburda (2016), “Can we predict the winner in a market with network effects? Competition in cryptocurrency market”, Games, Vol. 7 No.3: 16.
  • Granger, Clive, WJ.; Roselyne, Joyeux (1980), “An introduction to long‐memory time series models and fractional differencing”, Journal of time series analysis, Vol.1 No.1: 15-29.
  • Hosking, Jonathan, RM. (1981), “Fractional differencing”, Biometrika, Vol.68 No.1: 165-76.
  • Kayalıdere, Koray; Hakan Aracı; Hüseyin Aktaş (2012), “Türev ve spot piyasalar arasındaki etkileşim: VOB üzerine bir inceleme”, Muhasebe ve Finansman Dergisi, C.56 S.1: 137-54.
  • Lahmiri, Salim (2015), “Long memory in international financial markets trends and short movements during 2008 financial crisis based on variational mode decomposition and detrended fluctuation analysis”, Physica A: Statistical Mechanics and its Applications, Vol.437 No.1: 130-38.
  • Mensi, Walid; Shawkat, Hammoudeh; Sang, Hoon, Kang (2015), “Precious metals, cereal, oil and stock market linkages and portfolio risk management: Evidence from Saudi Arabia”, Economic Modelling, Vol.51 No.1: 340-58.
  • Tse, Yiu Kuen; (1998), “The conditional heteroscedasticity of the yen-dollar exchange rate”, Journal of Applied Econometrics, Vol.1 No.1: 49-55.
  • Turgutlu, Evrim (2004), “Fisher hipotezinin tutarlılığının testi: parçalı durağanlık ve parçalı koentegrasyon analizi”, DEÜ İİBF Dergisi, C.19 S.2: 55-74.
Toplam 22 adet kaynakça vardır.

Ayrıntılar

Birincil Dil Türkçe
Bölüm Makaleler
Yazarlar

Tuna Can Güleç 0000-0003-2551-6460

Hüseyin Aktaş 0000-0002-0580-4644

Yayımlanma Tarihi 30 Ağustos 2019
Gönderilme Tarihi 1 Şubat 2019
Yayımlandığı Sayı Yıl 2019 Cilt: 14 Sayı: 2

Kaynak Göster

APA Güleç, T. C., & Aktaş, H. (2019). Kripto Para Birimi Piyasalarında Etkinliğin Uzun Hafıza Ve Değişen Varyans Özelliklerinin Testi Yoluyla Analizi. Eskişehir Osmangazi Üniversitesi İktisadi Ve İdari Bilimler Dergisi, 14(2), 491-510. https://doi.org/10.17153/oguiibf.520679