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  • C Mathematical and Quantitative Methods
  • C1 Econometric and Statistical Methods: General

C14 Semiparametric and Nonparametric Methods

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Author

  • Hautsch, Nikolaus (6)
  • Grammig, Joachim (3)
  • Hujer, Reinhard (3)
  • Kokot, Stefan (3)
  • Malec, Peter (3)
  • Kyj, Lada M. (2)
  • Bibinger, Markus (1)
  • Caporin, Massimiliano (1)
  • Gaul, Jürgen (1)
  • Härdle, Wolfgang Karl (1)
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Year of publication

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Document Type

  • Working Paper (12)

Language

  • English (11)
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Keywords

  • Börsenkurs (3)
  • Schätzfunktion (3)
  • Bias (2)
  • Exponential smoothing (2)
  • Jumps (2)
  • Schätztheorie (2)
  • Schätzung (2)
  • Zeitreihenanalyse (2)
  • ACD (1)
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Institute

  • Center for Financial Studies (CFS) (7)
  • Wirtschaftswissenschaften (6)
  • Foundation of Law and Finance (1)
  • House of Finance (HoF) (1)
  • Sustainable Architecture for Finance in Europe (SAFE) (1)

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Option characteristics as cross-sectional predictors (2022)
Neuhierl, Andreas ; Tang, Xiaoxiao ; Varneskov, Rasmus Tangsgaard ; Zhou, Guofu
We provide the first comprehensive analysis of option information for pricing the cross-section of stock returns by jointly examining extensive sets of firm and option characteristics. Using portfolio sorts and high-dimensional methods, we show that certain option measures have significant predictive power, even after controlling for firm characteristics, earning a Fama-French three-factor alpha in excess of 20% per annum. Our analysis further reveals that the strongest option characteristics are associated with information about asset mispricing and future tail return realizations. Our findings are consistent with models of informed trading and limits to arbitrage.
Systemic co-jumps (2016)
Caporin, Massimiliano ; Kolokolov, Alexey ; Renò, Roberto
The simultaneous occurrence of jumps in several stocks can be associated with major financial news, triggers short-term predictability in stock returns, is correlated with sudden spikes of the variance risk premium, and determines a persistent increase (decrease) of stock variances and correlations when they come along with bad (good) news. These systemic events and their implications can be easily overlooked by traditional univariate jump statistics applied to stock indices. They are instead revealed in a clearly cut way by using a novel test procedure applied to individual assets, which is particularly effective on high-volume stocks.
Estimating the spot covariation of asset prices – statistical theory and empirical evidence (2014)
Bibinger, Markus ; Hautsch, Nikolaus ; Malec, Peter ; Reiß, Markus
We propose a new estimator for the spot covariance matrix of a multi-dimensional continuous semi-martingale log asset price process which is subject to noise and non-synchronous observations. The estimator is constructed based on a local average of block-wise parametric spectral covariance estimates. The latter originate from a local method of moments (LMM) which recently has been introduced by Bibinger et al. (2014). We extend the LMM estimator to allow for autocorrelated noise and propose a method to adaptively infer the autocorrelations from the data. We prove the consistency and asymptotic normality of the proposed spot covariance estimator. Based on extensive simulations we provide empirical guidance on the optimal implementation of the estimator and apply it to high-frequency data of a cross-section of NASDAQ blue chip stocks. Employing the estimator to estimate spot covariances, correlations and betas in normal but also extreme-event periods yields novel insights into intraday covariance and correlation dynamics. We show that intraday (co-)variations (i) follow underlying periodicity patterns, (ii) reveal substantial intraday variability associated with (co-)variation risk, (iii) are strongly serially correlated, and (iv) can increase strongly and nearly instantaneously if new information arrives.
Capturing the zero: a new class of zero-augmented distributions and multiplicative error processes (2011)
Hautsch, Nikolaus ; Malec, Peter ; Schienle, Melanie
We propose a novel approach to model serially dependent positive-valued variables which realize a non-trivial proportion of zero outcomes. This is a typical phenomenon in financial time series observed at high frequencies, such as cumulated trading volumes. We introduce a flexible point-mass mixture distribution and develop a semiparametric specification test explicitly tailored for such distributions. Moreover, we propose a new type of multiplicative error model (MEM) based on a zero-augmented distribution, which incorporates an autoregressive binary choice component and thus captures the (potentially different) dynamics of both zero occurrences and of strictly positive realizations. Applying the proposed model to high-frequency cumulated trading volumes of both liquid and illiquid NYSE stocks, we show that the model captures the dynamic and distributional properties of the data well and is able to correctly predict future distributions.
The merit of high-frequency data in portfolio allocation (2011)
Hautsch, Nikolaus ; Kyj, Lada M. ; Malec, Peter
This paper addresses the open debate about the usefulness of high-frequency (HF) data in large-scale portfolio allocation. Daily covariances are estimated based on HF data of the S&P 500 universe employing a blocked realized kernel estimator. We propose forecasting covariance matrices using a multi-scale spectral decomposition where volatilities, correlation eigenvalues and eigenvectors evolve on different frequencies. In an extensive out-of-sample forecasting study, we show that the proposed approach yields less risky and more diversified portfolio allocations as prevailing methods employing daily data. These performance gains hold over longer horizons than previous studies have shown.
Pre-averaging based estimation of quadratic variation in the presence of noise and jumps : theory, implementation, and empirical evidence (2010)
Hautsch, Nikolaus ; Podolskij, Mark
This paper provides theory as well as empirical results for pre-averaging estimators of the daily quadratic variation of asset prices. We derive jump robust inference for pre-averaging estimators, corresponding feasible central limit theorems and an explicit test on serial dependence in microstructure noise. Using transaction data of different stocks traded at the NYSE, we analyze the estimators’ sensitivity to the choice of the pre-averaging bandwidth and suggest an optimal interval length. Moreover, we investigate the dependence of pre-averaging based inference on the sampling scheme, the sampling frequency, microstructure noise properties as well as the occurrence of jumps. As a result of a detailed empirical study we provide guidance for optimal implementation of pre-averaging estimators and discuss potential pitfalls in practice. Quadratic Variation , MarketMicrostructure Noise , Pre-averaging , Sampling Schemes , Jumps
A blocking and regularization approach to high dimensional realized covariance estimation (2009)
Hautsch, Nikolaus ; Kyj, Lada M. ; Oomen, Roel C. A.
We introduce a regularization and blocking estimator for well-conditioned high-dimensional daily covariances using high-frequency data. Using the Barndorff-Nielsen, Hansen, Lunde, and Shephard (2008a) kernel estimator, we estimate the covariance matrix block-wise and regularize it. A data-driven grouping of assets of similar trading frequency ensures the reduction of data loss due to refresh time sampling. In an extensive simulation study mimicking the empirical features of the S&P 1500 universe we show that the ’RnB’ estimator yields efficiency gains and outperforms competing kernel estimators for varying liquidity settings, noise-to-signal ratios, and dimensions. An empirical application of forecasting daily covariances of the S&P 500 index confirms the simulation results.
Modelling and forecasting liquidity supply using semiparametric factor dynamics (2009)
Härdle, Wolfgang Karl ; Hautsch, Nikolaus ; Mihoci, Andrija
We model the dynamics of ask and bid curves in a limit order book market using a dynamic semiparametric factor model. The shape of the curves is captured by a factor structure which is estimated nonparametrically. Corresponding factor loadings are assumed to follow multivariate dynamics and are modelled using a vector autoregressive model. Applying the framework to four stocks traded at the Australian Stock Exchange (ASX) in 2002, we show that the suggested model captures the spatial and temporal dependencies of the limit order book. Relating the shape of the curves to variables reflecting the current state of the market, we show that the recent liquidity demand has the strongest impact. In an extensive forecasting analysis we show that the model is successful in forecasting the liquidity supply over various time horizons during a trading day. Moreover, it is shown that the model’s forecasting power can be used to improve optimal order execution strategies.
A partially linear approach to modelling the dynamics of spot and futures prices (2008)
Gaul, Jürgen ; Theissen, Erik
In this paper we consider the dynamics of spot and futures prices in the presence of arbitrage. We propose a partially linear error correction model where the adjustment coefficient is allowed to depend non-linearly on the lagged price difference. We estimate our model using data on the DAX index and the DAX futures contract. We find that the adjustment is indeed nonlinear. The linear alternative is rejected. The speed of price adjustment is increasing almost monotonically with the magnitude of the price difference.
Ökonometrische Modellierung von Transaktionsintensitäten auf Finanzmärkten : eine Anwendung von Autoregressive-conditional-duration-Modellen auf die IPO der Deutschen Telekom (1998)
Grammig, Joachim ; Hujer, Reinhard ; Kokot, Stefan ; Maurer, Kai-Oliver
Wir verwenden eine neue, auf der Burr-Verteilung basierende Spezifikation aus der Familie der Autoregressive Conditional Duration (ACD) Modelle zur ökonometrischen Analyse der Transaktionsintensitäten während der Börseneinführung (IPO) der Deutsche Telekom Aktie. In diesem Fallbeispiel wird die Leistungsfähigkeit des neu entwickelten Burr-ACD-Modells mit den Standardmodellen von Engle und Russell verglichen, die im Burr-ACD Modell als Spezialfälle enthalten sind. Wir diskutieren außerdem alternative Möglichkeiten, Intra- Tagessaisonalitäten der Handelsintensität in ACD Modellen zu berücksichtigen.
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