Assist. Prof. Dr. Meryem Yankol-Schalck | Insurance and Machine Learning | Best Researcher Award
Profile
Education
She holds a Ph.D. in Econometrics and Machine Learning from the University of Orleans (2018–2022), where she investigated new machine learning approaches for financial fraud detection and survival analysis in the insurance industry under the supervision of S. Tokpavi. In addition, she earned a Data Science Certificate (Executive) from the Institute of Risk Management (IRM) in 2016–2017. Her academic background also includes a Master’s degree in Mathematical Engineering (Applied Statistics) from Paris-Sud University (2004–2007) and a Master’s degree in Mathematics from the University of Marmara in Istanbul (1995–1999). Since September 2022, she has been an Assistant Professor of Data Science at IPAG Business School in Nice and Paris. With extensive experience in the insurance sector, she integrates her professional insights into the classroom, emphasizing practical AI applications. Her curriculum reflects the latest trends in data science, fostering a dynamic learning environment tailored to students’ needs. She adapts resources and pedagogical methods to specific course objectives, utilizing tools such as Tableau for data visualization and exploring real-world business applications, including Netflix, Uber, ChatGPT, Gemini, and facial recognition technologies.
She has held various academic and professional roles, combining her expertise in data science, machine learning, and business analytics. From September 2022 to January 2023, she was an adjunct faculty member at the International University of Monaco, where she taught Mathematics for Business. Prior to that, from September 2021 to August 2022, she served as an adjunct faculty member at IPAG Business School (Nice), teaching courses such as “Data Analysis for Business Management” (BBA3), “Data Processing” (MSc, e-learning), “Digital and Sales” (GEP 5th year), and “Introduction to Statistics” (BBA1). Between September 2020 and October 2021, she was an adjunct faculty member at EMLV (Paris), where she taught “Quantitative Data Analytics – SPSS” (GEP 4th year, hybrid learning) and supervised master’s theses for GEP 5th-year students.
In addition to her academic roles, she has extensive experience in the consulting and insurance sectors. From March to November 2020, she worked as a Senior Consultant at Fraeris (Paris), supporting clients in project development and providing technical solutions. She collaborated with the “Caisse de Prévoyance Sociale” (CPS) of French Polynesia, modeling healthcare expenditures using machine learning techniques. She developed predictive models to analyze healthcare costs from both the insured’s and CPS’s perspectives, offering actionable insights and data-driven forecasts to aid long-term financial planning. Prior to that, in 2019–2020, she was a Senior Manager in Pricing & Data P&C at Addactis (Paris), where she supported clients in project development, innovation, and strategic planning. As an expert referent for ADDACTIS® Pricing software, she worked on database processing for BNP Paribas Cardif, facilitating APLe software operations for quarterly account closings.
Memberships and Projects:
• Membership of the American Risk and Insurance Association (ARIA)
• Membership of the academic association AFSE.
• Member of the RED Flag Project of the University of Orléans in cooperation with CRJPothier.
• Participation at 3 Erasmus+ Projects: Artificial Intelligence to support Education (EducAItion).
• Virtual Incubator Tailored to All Entrepreneurs (VITAE).
• Artificial Intelligence in high Education (PRAIME),
Research topics:
Studies focus on the application of data science techniques to business issues, particularly in the insurance
sector, and on climate change. Another topic of study is the relationship between AI and education.
Publication
- Yankol-Schalck, M. (2023). Auto Insurance Fraud Detection: Leveraging Cost Sensitive and Insensitive
Algorithms for comprehensive Analysis, Insurance: Mathematics and Economics.(
(https://www.sciencedirect.com/science/article/abs/pii/S0167668725000216)
Banulescu‐Radu, D., & Yankol‐Schalck, M. (2024). Practical guideline to efficiently detect insurance fraud
in the era of machine learning: A household insurance case. Journal of Risk and Insurance, 91(4), 867-
913.
Yankol-Schalck, M. (2022). A Fraud Score for the Automobile Insurance Using Machine Learning and
Cross-Data set Analysis, Research in International Business and Finance, Volume 63, 101769.
Schalck, C., Yankol-Schalck, M. (2021). Failure Prediction for SME in France: New evidence from
machine learning techniques, Applied Economics, 53(51), 5948-5963.
On- going research:
Yankol-Schalck (2025). Auto Insurance Fraud Detection: Machine Learning and Deep Learning
Applications, submitted in Journal of Risk and Insurance.
Schalck, C., Yankol-Schalck, M. (2024). Churn prediction in the French insurance sector using Grabit
model, revision in Journal of Forecasting.
Schalck, C., Seungho, L., Yankol-Schalck, M. (2024). Characteristics of firms and climate risk
management: a machine learning approach. Work in progress for The Journal of Financial Economics.
Yankol-Schalck M.and Chabert Delio C., (2024). The application of machine learning to analyse changes in
consumer behaviour in a major crisis. Work in progress.
Yankol-Schalck M. and Nasseri A. (2024).An investigation into the integration of artificial intelligence in
education: Implications for teaching and learning methods. Work in progress.