Time Series for QFFE: Special Issue of the Journal of Time Series Analysis

IF 1 4区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Christian Francq, Christophe Hurlin, Sébastien Laurent, Jean-Michel Zakoian
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引用次数: 0

Abstract

QFFE stands for Quantitative Finance and Financial Econometrics conference, an event organized by Sébastien Laurent in Marseille every year since 2018. Each year there are two keynote speakers and two guest speakers, and around 60 selected papers are presented. The program for next year and previous years can be found here. The conference is preceded by a spring school, which offers doctoral students, post-doc, and young academics the opportunity to attend doctoral-level courses.

The QFFE conference is part of the ANR-funded project MLEforRisk (ANR-21-CE26-0007), which stands for Machine Learning and Econometrics for Risk Measurement in Finance. The project seeks to enhance our understanding of the advantages and limitations of integrating econometric methods with machine learning for measuring financial risks. This multidisciplinary initiative bridges the fields of finance and financial econometrics, bringing together a team of junior and senior researchers with expertise in management, economics, applied mathematics, and data science. The project aims to advance both theoretical insights and practical applications, fostering innovation at the intersection of these disciplines.

Since financial data such as stock prices, interest rates, and exchange rates are observed over time, time series analysis is crucial in finance. Finance professionals and academics often rely on fundamental time series models, such as ARMA, as well as essential time series techniques such as spectral analysis. Financial researchers are therefore naturally attracted to any new developments in time series. Econometricians have also developed new time series models and methods to capture the specificities of financial data. Contributions of econometricians include cointegration and error correction models, GARCH and stochastic volatility models, score-driven models, VAR models, Markov switching models, non-causal models, simulation-based inference, state space models, and Kalman filters, realized volatility measures, the Black–Scholes model, and factor models. The field of application of all these time series models and techniques is obviously not limited to finance. The aim of this special issue is to present some recent examples of the interface between time series analysis and finance.

We are very grateful to these authors. We would also like to thank the anonymous reviewers for their valuable review and feedback, which helped to improve the quality of this special issue. Special thanks go to Robert Taylor, Editor-in-Chief of the Journal of Time Series Analysis, for supporting this project, as well as to Priscilla Goldby for her invaluable help.

QFFE的时间序列:时间序列分析杂志特刊
QFFE代表定量金融和金融计量经济学会议,自2018年以来每年在马赛由ssambastien Laurent组织。每年有两名主题演讲嘉宾和两名客座演讲嘉宾,并发表约60篇精选论文。明年和前几年的计划可以在这里找到。会议之前有一个春季学校,为博士生、博士后和年轻学者提供参加博士级别课程的机会。QFFE会议是anr资助的MLEforRisk项目(ANR-21-CE26-0007)的一部分,该项目代表金融风险度量的机器学习和计量经济学。该项目旨在增强我们对将计量经济学方法与机器学习相结合以测量金融风险的优点和局限性的理解。这一多学科倡议将金融和金融计量经济学领域联系起来,汇集了一支具有管理、经济学、应用数学和数据科学专业知识的初级和高级研究人员团队。该项目旨在推进理论见解和实际应用,促进这些学科交叉的创新。由于股票价格、利率和汇率等金融数据是随时间观察的,因此时间序列分析在金融中至关重要。金融专业人士和学者经常依赖基本的时间序列模型,如ARMA,以及基本的时间序列技术,如光谱分析。因此,金融研究人员自然会被时间序列的任何新发展所吸引。计量经济学家还开发了新的时间序列模型和方法来捕捉金融数据的特殊性。计量经济学家的贡献包括协整和误差修正模型、GARCH和随机波动率模型、分数驱动模型、VAR模型、马尔可夫切换模型、非因果模型、基于仿真的推理、状态空间模型、卡尔曼滤波、实现的波动率度量、Black-Scholes模型和因子模型。所有这些时间序列模型和技术的应用领域显然并不局限于金融。本期特刊的目的是介绍时间序列分析与金融之间联系的一些最新例子。我们非常感谢这些作者。我们还要感谢匿名审稿人提供的宝贵意见和反馈,这有助于提高本期特刊的质量。特别感谢《时间序列分析杂志》主编Robert Taylor对本项目的支持,以及Priscilla Goldby的宝贵帮助。
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来源期刊
Journal of Time Series Analysis
Journal of Time Series Analysis 数学-数学跨学科应用
CiteScore
2.00
自引率
0.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: During the last 30 years Time Series Analysis has become one of the most important and widely used branches of Mathematical Statistics. Its fields of application range from neurophysiology to astrophysics and it covers such well-known areas as economic forecasting, study of biological data, control systems, signal processing and communications and vibrations engineering. The Journal of Time Series Analysis started in 1980, has since become the leading journal in its field, publishing papers on both fundamental theory and applications, as well as review papers dealing with recent advances in major areas of the subject and short communications on theoretical developments. The editorial board consists of many of the world''s leading experts in Time Series Analysis.
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