Separating Information Maximum Likelihood Method for High-Frequency Financial Data (SpringerBriefs in Statistics)
Naoto Kunitomo
- 出版商: Springer
- 出版日期: 2018-07-02
- 售價: $2,440
- 貴賓價: 9.5 折 $2,318
- 語言: 英文
- 頁數: 124
- 裝訂: Paperback
- ISBN: 4431559280
- ISBN-13: 9784431559283
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相關分類:
機率統計學 Probability-and-statistics
海外代購書籍(需單獨結帳)
相關主題
商品描述
This book presents a systematic explanation of the SIML (Separating Information Maximum Likelihood) method, a new approach to financial econometrics.
Considerable interest has been given to the estimation problem of integrated volatility and covariance by using high-frequency financial data. Although several new statistical estimation procedures have been proposed, each method has some desirable properties along with some shortcomings that call for improvement. For estimating integrated volatility, covariance, and the related statistics by using high-frequency financial data, the SIML method has been developed by Kunitomo and Sato to deal with possible micro-market noises.
The authors show that the SIML estimator has reasonable finite sample properties as well as asymptotic properties in the standard cases. It is also shown that the SIML estimator has robust properties in the sense that it is consistent and asymptotically normal in the stable convergence sense when there are micro-market noises, micro-market (non-linear) adjustments, and round-off errors with the underlying (continuous time) stochastic process. Simulation results are reported in a systematic way as are some applications of the SIML method to the Nikkei-225 index, derived from the major stock index in Japan and the Japanese financial sector.
Considerable interest has been given to the estimation problem of integrated volatility and covariance by using high-frequency financial data. Although several new statistical estimation procedures have been proposed, each method has some desirable properties along with some shortcomings that call for improvement. For estimating integrated volatility, covariance, and the related statistics by using high-frequency financial data, the SIML method has been developed by Kunitomo and Sato to deal with possible micro-market noises.
The authors show that the SIML estimator has reasonable finite sample properties as well as asymptotic properties in the standard cases. It is also shown that the SIML estimator has robust properties in the sense that it is consistent and asymptotically normal in the stable convergence sense when there are micro-market noises, micro-market (non-linear) adjustments, and round-off errors with the underlying (continuous time) stochastic process. Simulation results are reported in a systematic way as are some applications of the SIML method to the Nikkei-225 index, derived from the major stock index in Japan and the Japanese financial sector.
商品描述(中文翻譯)
本書系統性地解釋了SIML(Separating Information Maximum Likelihood)方法,這是一種新的金融計量經濟學方法。對於使用高頻金融數據來估計整合波動率和協方差的問題,已引起相當大的關注。儘管已提出幾種新的統計估計程序,但每種方法都有一些理想的特性以及一些需要改進的缺點。為了使用高頻金融數據來估計整合波動率、協方差及相關統計量,Kunitomo和Sato開發了SIML方法,以應對可能的微市場噪音。
作者顯示,SIML估計量在標準情況下具有合理的有限樣本性質以及漸近性質。還顯示,當存在微市場噪音、微市場(非線性)調整和與基礎(連續時間)隨機過程相關的四捨五入誤差時,SIML估計量在穩定收斂意義上是一致且漸近正態的,具有穩健性。模擬結果以系統化的方式報告,並展示了SIML方法在日本主要股指及日本金融部門的Nikkei-225指數上的一些應用。