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High Frequency Financial Econometri
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Prof. Luc Bauwens CORE Voie du Roma
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vi Contents Intraday stock prices,
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2 L. Bauwens et al. component nicel
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4 L. Bauwens et al. but provides al
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Luc Bauwens . Dagfinn Rime . Genaro
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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Exchange rate volatility and the mi
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32 K. Bien et al. Although economet
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34 K. Bien et al. 2.1 Copula functi
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36 K. Bien et al. and x k t ≡ (xk
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38 K. Bien et al. Fig. 3 Multivaria
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40 K. Bien et al. Bivariate model s
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42 K. Bien et al. deviation 0.0099,
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44 K. Bien et al. - Set ˆzt = Âxt
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46 K. Bien et al. % Frequency −0.
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48 K. Bien et al. References Amilon
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50 1 Introduction A. Escribano and
- Page 58 and 59: 52 A. Escribano and R. Pascual Jang
- Page 60 and 61: 54 A. Escribano and R. Pascual the
- Page 62 and 63: 56 The generating processes of mark
- Page 64 and 65: 58 with AtðLÞ ¼ 0 B @ 1 ð ÞAab
- Page 66 and 67: 60 A. Escribano and R. Pascual cros
- Page 68 and 69: 62 Hasbrouck (1991). The system is
- Page 70 and 71: 64 unitary seller-initiated shock (
- Page 72 and 73: 66 6.1 Estimation of the baseline m
- Page 74 and 75: Table 2 The base-line VEC model for
- Page 76 and 77: 70 Table 3 Simulation of the base-l
- Page 78 and 79: 72 revert towards narrow levels. As
- Page 80 and 81: Table 5 Impulse-response functions
- Page 82 and 83: 76 We also show that NYSE buyer-ini
- Page 84 and 85: 78 As 0 < a m < 1; L ð Þ ¼ 1 a m
- Page 86 and 87: 80 NYSE 2000 Stocks AOL America Onl
- Page 88 and 89: 82 A. Escribano and R. Pascual Madh
- Page 90 and 91: 84 1 Introduction S. Frey, J. Gramm
- Page 92 and 93: 86 develops the empirical methodolo
- Page 94 and 95: Table 1 Sample descriptives Company
- Page 96 and 97: 90 comparability across stocks, we
- Page 98 and 99: 92 subtracting the deviations from
- Page 100 and 101: 94 market order distribution that c
- Page 102 and 103: 96 Table 2 First stage GMM results
- Page 104 and 105: Table 4 First stage GMM results bas
- Page 106 and 107: 100 S. Frey, J. Grammig quotes on e
- Page 110 and 111: 104 To obtain the estimates in the
- Page 112 and 113: 106 Hence, using the liquidity stat
- Page 114 and 115: 108 In the main text we discuss the
- Page 117 and 118: Pierre Giot . Joachim Grammig How l
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- Page 140 and 141: 134 A. D. Hall, N. Hautsch In this
- Page 142 and 143: 136 includes order book variables,
- Page 144 and 145: 138 An important determinant of liq
- Page 146 and 147: 140 The innovation term ei is compu
- Page 148 and 149: Table 1 Order book characteristics
- Page 150 and 151: 144 data covering the normal tradin
- Page 152 and 153: 146 Table 3 Descriptive statistics
- Page 154 and 155: Table 4 Fully specified ACI models
- Page 156 and 157: Table 4 (continued) BHP NAB NCP TLS
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Table 5 ACI models without dynamics
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Table 5 (continued) BHP NAB NCP TLS
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Table 6 ACI models without covariat
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Table 6 (continued) BHP NAB NCP TLS
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160 specification which includes or
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162 5.2.5 The impact of the bid-ask
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164 contrast to those of Pascual an
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Roman Liesenfeld . Ingmar Nolte . W
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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Modelling financial transaction pri
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200 W. B. Omrane, H. V. Oppens anal
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202 W. B. Omrane, H. V. Oppens of s
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204 The extrema detection method ba
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206 price 0.8565 0.8575 0.8585 0.85
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208 We distinguish three possible c
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210 originates. The most active tra
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212 Table 2 Predictability of the c
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214 6 Conclusion Using 5-min euro/d
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216 where σk is the standard devia
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218 If we meet a particular case su
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220 C.5. Triple bottom (TB) TB is c
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222 References W. B. Omrane, H. V.
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Juan M. Rodríguez-Poo · David Ver
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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Semiparametric estimation for finan
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254 between price changes and durat
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256 simply aggregated. Even after a
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258 is to make use of the fact that
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260 together with the restrictions
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Table 3 Estimated probabilities of
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264 A. S. Tay, C. Ting More interes
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Table 4 Estimated probabilities of
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268 Acknowledgements Tay gratefully
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270 This paper explores the effect
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272 contrast, price responses to po
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274 Fig. 1 Continuous line is the T
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276 the β’s can form a convex sh
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278 fixing some intervals around th
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280 . That is for a given absolute
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282 30 25 20 15 10 5 CC UNEMW ISM U
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Appendix Table A1 Consumer confiden
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Table A3 Non-farm payrolls • ✓
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Table A5 Weekly unemployment claims
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290 Table A8 Retail sales • ✓ 1
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292 Table A12 GDP, BI, TB and PI Re
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294 V. Voev with the problem of how
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296 V. Voev 2.1 A sample covariance
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298 V. Voev Using the equicorrelate
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300 V. Voev where �kl(t) is the (
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302 V. Voev where hkl,k ′ l ′ i
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304 V. Voev is 1.9%. From the daily
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306 V. Voev ACF ACF ACF 0.5 0.5 0.5
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308 V. Voev autocorrelated. Indeed,
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310 V. Voev 5 Conclusion Table 2 Ro
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312 V. Voev Engle R (1982) Autoregr