Dr. Lu Xiong

Assistant Professor

Dr. Lu Xiong
(615) 898-5471
Room 322G, Kirksey Old Main (KOM)
MTSU Box 34, Murfreesboro, TN 37132

Degree Information

  • PHD, Middle Tennessee State University (2014)
  • MS, Middle Tennessee State University (2014)
  • BS, Beijing University of Posts and Telecommunications (2010)

Areas of Expertise

My research focuses on Computational Actuarial Science—an interdisciplinary field that leverages advanced computational methods to solve practical issues in actuarial science and closely related areas like finance and healthcare risk management. This focus has roots in my diverse academic and professional background, which spans actuarial science, computational science, bioinformatics, and corporate financial analysis. Here’s how some of my key research areas align with this overa...

Read More »

My research focuses on Computational Actuarial Science—an interdisciplinary field that leverages advanced computational methods to solve practical issues in actuarial science and closely related areas like finance and healthcare risk management. This focus has roots in my diverse academic and professional background, which spans actuarial science, computational science, bioinformatics, and corporate financial analysis. Here’s how some of my key research areas align with this overarching theme:

  1. Enhancing Regulatory Systems

My work in improving the Insurance Regulatory Information System (IRIS) incorporates computational simulations and machine learning algorithms. Originating from my consultancy experience, I've developed probabilistic models for assessing insurer solvency, thus introducing stochastic elements into what has traditionally been a deterministic scoring system. This research is particularly relevant for regulators and policyholders who need more nuanced metrics for financial stability.

  1. Data Science in Actuarial Science and Risk Management Applications

I have employed machine learning and predictive modeling in various sectors, including healthcare and credit risk management. For example, my work on "Predictive Analytics for 30-day Hospital Readmissions" utilized generalized linear models to not only predict but also understand the factors that influence hospital readmissions. This research provides actionable insights for healthcare institutions to improve patient outcomes.

  1. Advanced Proxy Modeling for Financial Products

Proxy modeling techniques are widely used for pricing variable annuities—a complex but essential financial product. My research aims to accelerate the computational process involved, using distributed computing. By optimizing algorithms like the Least Squares Monte Carlo simulation, my work contributes to more accurate and faster pricing, thus benefitting the insurance and finance industries.

  1. Health Data Systems Development

I am involved in the development and integration of health data systems based on Health Level Seven (HL7) standards. This is crucial for enhancing the seamless sharing of healthcare information and elevating the patient care.

  1. Natural Language Processing (NLP) for Actuarial Science

I apply NLP techniques to decode and analyze vast amounts of unstructured data in actuarial science, unlocking new avenues for risk assessment and pricing models.

  1. Corporate Financial Analysis

This work fits well with my work in actuarial risk assessment. Focusing on Chinese reverse mergers, I and co-authors explore how performance commitments influence analysts' earnings forecasts and thus affect market information. This work aims to reduce forecast risk, a vital element in corporate finance, insurance, and investment decisions, thereby providing a more holistic understanding of risk management.

  1. Actuarial Software Development

My strong interest in software development led to the creation of AutoReserve, an open-source, web-based actuarial tool that streamlines various tasks for general insurance actuaries. This work contributes to democratizing advanced actuarial tools and can also serves as an educational resource for actuarial students.

My research aims to enhance risk management by integrating computational techniques with actuarial science. This approach not only helps academia but also benefits industries and society, while equipping future actuaries for a data-driven world.

« Read Less

Biography

Dr. Xiong is an assistant professor in the actuarial science program at Middle Tennessee State University (MTSU). He completed his ASA in 2021. He is also a faculty member in the Ph.D. program of Computational and Data Science at MTSU. Dr. Xiong has taught a broad array of actuarial courses, ranging from foundational to advanced exam preparation classes such as Exam-P, FM, LTAM, STAM, IFM, and PA. He also oversees undergraduate research projects in the field of actuarial science and acts as t...

Read More »

Dr. Xiong is an assistant professor in the actuarial science program at Middle Tennessee State University (MTSU). He completed his ASA in 2021. He is also a faculty member in the Ph.D. program of Computational and Data Science at MTSU. Dr. Xiong has taught a broad array of actuarial courses, ranging from foundational to advanced exam preparation classes such as Exam-P, FM, LTAM, STAM, IFM, and PA. He also oversees undergraduate research projects in the field of actuarial science and acts as the faculty advisor for the Actuarial and Math Students Association (AMSA).

Before joining MTSU, Dr. Xiong gained valuable industry experience. He worked for two years in actuarial consulting in Nashville, focusing on general insurance. He also spent a year in quantitative investment as an entrepreneur and completed a one-year postdoctoral research stint in healthcare at Emory University School of Medicine.

When it comes to his teaching approach, Dr. Xiong integrates his industry insights to help students understand what employers are looking for and how best to gear up for a career in actuarial science. In the realm of research, he specializes in applying advanced computational methods and machine learning algorithms to resolve complex issues in actuarial science.

« Read Less

Publications

  1. Xiong, L.Luo, J.; Vise, H.; White, M. (2023). Distributed Least-Squares Monte Carlo for American Option Pricing. Risks11(8), 145. 
Read More »
  1. Xiong, L.Luo, J.; Vise, H.; White, M. (2023). Distributed Least-Squares Monte Carlo for American Option Pricing. Risks11(8), 145. https://doi.org/10.3390/risks11080145
  2. Xiong, L.Manathunga, V., Luo, J., Dennison, N., Zhang, R., Xiang, Z.  (2023). AutoReserve: a web-based tool for personal auto insurance loss reserving with classical and machine learning methods. Risks11(7), 131. https://doi.org/10.3390/risks11070131
  3. Liu, Y., Yang, L., Xiong, L., Performance Commitments and the Properties of Analyst Earnings Forecasts: Evidence from Chinese Reverse Merger Firms. International Review of Financial Analysis. https://authors.elsevier.com/c/1hOl-3mS~2a18U
  4. Xiong, L., Tian, K., Qian, Y., Musyoka, W., Chen, X. (2023). Determine the Undervalued US Major League Baseball Players with Machine Learning. International Journal of Innovative Technology and Exploring Engineering. https://www.ijitee.org/portfolio-item/B94060112223/
  5. Xiong, L., Hong, D. (2022). CapSolve: A Solvency Assessment and Prediction Framework for Workers’ Compensation Captive Insurance Companies. Journal of Insurance Issues45(2), 82-113. https://www.jstor.org/stable/48703228 
  6. Xiong, L., Williams, S. D. (2022). Generalized Linear Model for Predicting the Credit Card Default Payment Risk. Advances in Science, Technology and Engineering Systems Journal (Special Issue on Innovation in Computing, Engineering Science & Technology). https://doi.org/10.25046/aj070306 
  7. Xiong, L. (2022). Predictive Modeling for Transportation Security Administration Claims Data. ANWESH: International Journal of Management & Information Technology, 7(2), 10-20. http://www.publishingindia.com/anwesh/106/predictive-modelling-for-transportation-security-administration-claims-data/32006/76746/ 
  8. Xiong, L., Sun, T., Green, R. (2021). Predictive Analytics for 30-day Hospital Readmissions. Mathematical Foundations of Computing, Online First. https://www.aimsciences.org/article/doi/10.3934/mfc.2021035
  9. Xiong, L., Hong, D. (2014). Multi-resolution Analysis Method for IMS Data Biomarker Selection and Classification. British Journal of Mathematics and Computer Science, 5(1), 65-81. https://doi.org/10.9734/BJMCS/2015/9870
  10. Xiong, L. (2020). Comparative Study of Predictive Analytics Algorithms and Tools on Property and Casualty Insurance Solvency Prediction (pp. 81-88). Association for Computing Machinery (ACM). https://doi.org/10.1145/3418653.3418663
  11. Xiong, L., Hong, D. (2020). Using Monte Carlo Simulation to Predict Captive Insurance Solvency (pp. 84- 88). Association for Computing Machinery (ACM). https://doi.org/10.1145/3388142.3388171
  12. Xiong, L., Hong, D. (2017). An MCMC-MRF Algorithm for Incorporating Spatial Information in IMS Proteomic Data Processing. Statistical Analysis of Proteomics, Metabolomics, and Lipidomics Data Using Mass Spectrometry. Murfreesboro: Springer International Publishing. https://www.springerprofessional.de/en/an-mcmc-mrf-algorithm-for-incorporating-spatial-information-in-i/11933362
  13. Xiong, L., Liang, J., Chen, X., Cao, X., Zhu, P., Zhao, M. (2023). Tree-based Machine Learning Methods for Analytics of Online Shoppers’ Purchasing Intentions. International Journal of Data Science.
  14. Xiong, L. (2014). Statistical Computing Schemes for Proteomics Data Processing and Insurance Solvency Modelinghttp://jewlscholar.mtsu.edu/handle/mtsu/4331

« Read Less

Research / Scholarly Activity

Courses

Fall 2018

  1. ACSI 4230/5230 Math of Compound Interest
  2. ACSI 6010 Introduction to Loss Models

Spring 2019

Read More »

Fall 2018

  1. ACSI 4230/5230 Math of Compound Interest
  2. ACSI 6010 Introduction to Loss Models

Spring 2019

  1. ACSI 4140/5140 Math Found Actuarial Science
  2. ACSI 6020 Constr & Eval Actuarial Models

Summer 2019

  1. MATH 1730 Pre-Calculus

Fall 2019

  1. ACSI 4600 Problems in Actuarial Science
  2. ACSI 6010 Introduction to Loss Models
  3. MATH 1910 Calculus I

Spring 2020

  1. ACSI 4140/5140 Math Found Actuarial Science
  2. ACSI 4640 Math of Options, Futures, Derv
  3. ACSI 6020 Constr & Eval Actuarial Models
  4. COMS 7950 Comp Sci Research Seminar

Summer 2020

  1. MATH 1910 Calculus I

Fall 2020

  1. ACSI 4600 Problems in Actuarial Science
  2. ACSI 6010 Introduction to Loss Models
  3. ACSI 6110 Predictive Analytics
  4. COMS 7950 Comp Sci Research Seminar

Spring 2021

  1. ACSI 4330 Actuarial Mathematics I
  2. ACSI 6020 Constr & Eval Actuarial Models
  3. COMS 7950 Comp Sci Research Seminar

Summer 2021

  1. MATH 1730 Pre-Calculus

Fall 2021

  1. ACSI 4340 Actuarial Mathematics II
  2. COMS 7950 Comp Sci Research Seminar
  3. MATH 6603 Problems in Math of Finance

Spring 2022

  1. ACSI 4330 Actuarial Mathematics I
  2. ACSI 6040 Financial Economics Models

Summer 2022

  1. MATH 3110 Calculus III

Fall 2022

  1. ACSI 6010 Introduction to Loss Models
  2. ACSI 6110 Predictive Analytics

Spring 2023

  1. ACSI 4330 Actuarial Mathematics I
  2. ACSI 6040 Financial Economics Models

Summer 2023

  1. MATH 3110 Calculus III
  2. DATA 6300 Data Understanding

Fall 2023

  1. ACSI 4340 Actuarial Mathematics II
  2. ACSI 4600 Problems in Actuarial Science

« Read Less