International Conference on Computational Methods in Statistical Learning - (ICCMSL-26)
15th - 16th May, 2026 | Vancouver, Canada
15th April, 2026
25th April, 2026
30th April, 2026
15th - 16th May, 2026
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 1 — No Poverty
SDG 4 — Quality Education
SDG 9 — Industry, Innovation and Infrastructure
SDG 10 — Reduced Inequalities
SDG 11 — Sustainable Cities and Communities
SDG 16 — Peace, Justice and Strong Institutions
SDG 17 — Partnerships for the Goals
This track focuses on the latest developments in machine learning algorithms, emphasizing their theoretical foundations and practical applications. Contributions that explore novel approaches to classification, regression, and clustering are particularly welcome.
This session aims to address the unique challenges posed by big data through innovative statistical methodologies. Papers that demonstrate the integration of statistical techniques with large-scale data analysis are encouraged.
This track explores the role of computational models in enhancing predictive analytics across various domains. Submissions should highlight the effectiveness of these models in real-world applications.
Focusing on the intersection of neural networks and deep learning, this track invites research that showcases advancements in architecture and training methodologies. Contributions should demonstrate the impact of these techniques on statistical learning.
This session will delve into optimization strategies that improve the performance of statistical learning models. Papers that propose new optimization algorithms or enhance existing methods are highly encouraged.
This track emphasizes the importance of simulation techniques in data science, particularly in model validation and uncertainty quantification. Contributions should provide insights into innovative simulation methodologies and their applications.
This session will explore the foundational aspects of probability theory and its relevance to modern statistical practices. Papers that connect theoretical advancements with practical applications in various fields are welcome.
Focusing on the application of quantitative methods in social sciences, this track invites research that utilizes statistical learning to address social phenomena. Contributions should highlight innovative approaches and findings.
This session aims to showcase diverse research applications of statistical learning across various disciplines. Papers that demonstrate the impact of statistical learning techniques on solving real-world problems are encouraged.
This track addresses the ethical considerations and transparency issues surrounding data science practices. Contributions should discuss frameworks and guidelines for responsible data usage in statistical learning.
This session invites papers that explore interdisciplinary approaches to statistical learning, integrating insights from fields such as computer science, economics, and biology. Contributions should highlight collaborative research efforts and innovative methodologies.