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Aligned with
This conference contributes to global sustainability by aligning its research discussions and academic sessions with key United Nations Sustainable Development Goals. It fosters knowledge exchange, innovation, and collaborative engagement.
SDG 8 — Decent Work and Economic Growth
SDG 9 — Industry, Innovation and Infrastructure
SDG 11 — Sustainable Cities and Communities
SDG 13 — Climate Action
SDG 15 — Life on Land
This track focuses on the latest developments in probability theory as applied to extreme event analysis. Researchers are invited to present innovative methodologies that enhance our understanding of rare and impactful occurrences.
This session will explore statistical modeling techniques that are pivotal in risk management across various domains. Contributions that demonstrate the application of these models in real-world scenarios are particularly encouraged.
This track aims to address the statistical approaches used in predicting extreme climate events. Participants will discuss the integration of statistical models with climate data to improve forecasting accuracy.
This session will delve into the application of statistical methods in assessing and managing financial risks. Papers that highlight innovative quantitative approaches to financial uncertainty are welcome.
This track focuses on the role of environmental statistics in assessing risks associated with extreme environmental events. Contributions that utilize statistical tools to analyze environmental data are encouraged.
This session will highlight the use of simulation techniques in modeling extreme events and their impacts. Researchers are invited to present novel simulation approaches that enhance predictive capabilities.
This track will explore the intersection of data science and risk management, emphasizing statistical methods that leverage large datasets. Contributions that showcase innovative data-driven solutions to risk analysis are encouraged.
This session will focus on the development and application of predictive analytics in the context of extreme events. Papers that demonstrate the effectiveness of predictive models in various fields are particularly welcome.
This track aims to explore the integration of machine learning techniques with traditional risk analysis frameworks. Contributions that highlight the advantages of machine learning in understanding and mitigating risks are encouraged.
This session will address quantitative methods used for uncertainty quantification in extreme event analysis. Researchers are invited to present methodologies that enhance the reliability of risk assessments.
This track will focus on the application of stochastic processes in modeling extreme events and their associated risks. Contributions that explore theoretical advancements and practical applications are welcome.
