Details of a Researcher - Nagakura Daisuke


Nagakura Daisuke

写真a

Affiliation

Faculty of Economics (Mita)

Position

Professor

Related Websites

Message from the Faculty Member 【 Display / hide

  • 私の研究分野は計量経済学(Econometrics)、金融計量経済学(Financial Econometrics)、時系列分析(Time Series Analysis)です。

Career 【 Display / hide

  • 2016.04
    -
    Present

    慶應義塾大学経済学部, 教授

  • 2011.04
    -
    2016.03

    Associate Professor, Department of Economics, Keio University, 准教授

  • 2010.04
    -
    2011.03

    Graduate School of Finance, Accounting, and Law, Waseda University, 助教

  • 2007.09
    -
    2010.03

    Institute for Monetary and Economic Studies, Bank of Japan

Academic Background 【 Display / hide

  • 2007.08

    University of Washington, Department of Economics

    United States, Graduate School, Completed, Doctoral course

  • 2001.03

    Yokohama National University, 国際社会科学研究科

    Graduate School, Completed, Master's course

  • 1999.03

    Yokohama National University, Faculty of Economics

    University, Graduated

Academic Degrees 【 Display / hide

  • Ph.D in Economics, University of Washington, Coursework, 2007.08

 

Papers 【 Display / hide

  • Testing for Random Coefficient Autoregressive and Stochastic Unit Root Models

    Daisuke Nagakura

    Studies in Nonlinear Dynamics and Econometrics  2021

    Research paper (scientific journal), Single Work, Accepted

  • Computing exact score vectors for linear Gaussian state space models

    Daisuke Nagakura

    Communications in Statistics - Simulation and Computation  forthcoming 2021

    Research paper (scientific journal), Single Work, Accepted,  ISSN  03610918

     View Summary

    © 2019, © 2019 Taylor & Francis Group, LLC. A recursive formula for computing the exact value of score vectors is proposed for a general form of the linear Gaussian state space model, which is more desirable than approximate values in some statistical analyses. Unlike most extant methods, our formula calculates all components of the score vector simultaneously. This approach significantly simplifies its programing, in particular, with some matrix-oriented programing languages, such as MATLAB. We also consider a way of handling initial conditions that depend on unknown parameters. This issue has not yet been explicitly addressed in the existing literature in the context of exact score computing for a general case, such as the one that we consider in this paper. It is also shown that our formula is especially useful for calculating score tests with an outer product of gradient asymptotic covariance matrix estimator.

  • Further Results on the vecd Operator and Its Applications

    Daisuke Nagakura

    Communications in Statistics, Theory and Methods  49 ( 10 ) 2321 - 2338 2020

    Research paper (scientific journal), Single Work, Accepted,  ISSN  03610926

     View Summary

    © 2019, © 2019 Taylor & Francis Group, LLC. In this paper, we consider the matrix vectorization operator termed the vecd operator, which has recently been introduced in the literature. This operator stacks up distinct elements of a symmetric matrix in a way that differs from that of the well-known vech operator; it stacks up not columns, but diagonals. We give further consideration to the vecd operator and related matrices, and derive their various useful properties. We provide some statistical applications of the vecd operator to illustrate its usefulness.

  • On the Relationship between the Matrix Operators, vech and vecd

    Daisuke Nagakura

    Communications in Statistics, Theory and Method 47 ( 13 ) 3252 - 3268 2018

    Research paper (scientific journal), Single Work, Accepted,  ISSN  03610926

     View Summary

    © 2018 Taylor & Francis Group, LLC. We introduce a matrix operator, which we call “vecd” operator. This operator stacks up “diagonals” of a symmetric matrix. This operator is more convenient for some statistical analyses than the commonly used “vech” operator. We show an explicit relationship between the vecd and vech operators. Using this relationship, various properties of the vecd operator are derived. As applications of the vecd operator, we derive concise and explicit expressions of the Wald and score tests for equal variances of a multivariate normal distribution and for the diagonality of variance coefficient matrices in a multivariate generalized autoregressive conditional heteroscedastic (GARCH) model, respectively.

  • A State Space Approach to Estimating the Integrated Variance under the Existence of Market Microstructure Noise

    Daisuke Nagakura (with Toshiaki Watanabe)

    Journal of Financial Econometrics 13 ( 1 ) 45 - 82 2015

    Research paper (scientific journal), Joint Work, Accepted,  ISSN  14798409

     View Summary

    © The Author, 2013. This article develops a state space method for estimating the integrated variance under the existence of market microstructure noise (MMN). Our method is based on a state space representation of the noisecontaminated RV (NCRV), namely, the realized variance (RV) calculated with observed prices contaminated by MMNs. The main idea of our method is to filter out the bias component, which we call the microstructure noise (MN) component, from the NCRV using the Kalman filter. We apply the proposed method to yen/dollar exchange rate data.We find that about half of the variation in NCRV is because of the MN component. The proposed method can serve as a convenient way to estimate a general class of continuous-time stochastic volatility models under the existence of MMN.

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Papers, etc., Registered in KOARA 【 Display / hide

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Presentations 【 Display / hide

  • Please see http://web.keio.jp/~nagakura/index.html for details

    2000.01

    Oral presentation (general)

 

Courses Taught 【 Display / hide

  • TIME SERIES ANALYSIS

    2024

  • SEMINAR: ECONOMETRICS

    2024

  • RESEARCH SEMINAR D

    2024

  • RESEARCH SEMINAR C

    2024

  • RESEARCH SEMINAR B

    2024

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