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Hybrid Event

13th - 14th July 2026 | Tokyo, Japan

International Conference on Probabilistic Approaches in Machine Learning (ICPAPML - 26)

4

Days

4

Hrs

07

Min

02

Sec

Conference Program

Session Tracks

SDG Wheel

Aligned with

UN Sustainable Development Goals

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.

Why it matters

SDG 4 — Quality Education
SDG 8 — Decent Work and Economic Growth
SDG 9 — Industry, Innovation and Infrastructure
SDG 11 — Sustainable Cities and Communities
SDG 17 — Partnerships for the Goals
Explore All Session Tracks
Track 01
Bayesian Methods in Machine Learning

This track focuses on the application of Bayesian techniques in machine learning, emphasizing their advantages in uncertainty quantification and model interpretability. Researchers are invited to present innovative methodologies and case studies that showcase the effectiveness of Bayesian approaches.

Track 02
Graphical Models and Their Applications

This session explores the use of graphical models in representing complex dependencies among random variables. Contributions may include theoretical advancements, algorithmic developments, and practical applications in various domains.

Track 03
Stochastic Optimization Techniques

This track addresses the latest advancements in stochastic optimization methods for machine learning. Papers should discuss novel algorithms, convergence properties, and applications to real-world problems.

Track 04
Random Processes in Data Analysis

This session highlights the role of random processes in analyzing and modeling data. Submissions are encouraged to explore theoretical foundations and practical implementations across diverse fields.

Track 05
Probabilistic Models for Statistical Learning

This track invites contributions that develop and analyze probabilistic models tailored for statistical learning tasks. Emphasis will be placed on the integration of probabilistic frameworks with machine learning algorithms.

Track 06
Simulation Techniques in Probabilistic Modeling

This session focuses on simulation methodologies used in probabilistic modeling and machine learning. Papers should present innovative simulation techniques and their applications in various research scenarios.

Track 07
Algorithms for Probabilistic Inference

This track is dedicated to the development of algorithms for efficient probabilistic inference in complex models. Contributions may include new algorithms, performance evaluations, and comparisons with existing methods.

Track 08
Applications of Probability Theory in Machine Learning

This session showcases the application of probability theory in solving machine learning problems across various domains. Researchers are encouraged to present case studies that illustrate the practical impact of probabilistic approaches.

Track 09
Statistical Learning Theory and Its Foundations

This track delves into the theoretical underpinnings of statistical learning, focusing on the role of probability theory. Submissions should explore foundational concepts and their implications for machine learning.

Track 10
Advanced Topics in Probabilistic Graphical Models

This session invites discussions on advanced topics related to probabilistic graphical models, including learning algorithms and inference techniques. Researchers are encouraged to present cutting-edge research and novel applications.

Track 11
Emerging Trends in Probabilistic Machine Learning

This track aims to highlight emerging trends and future directions in probabilistic machine learning. Contributions should address novel methodologies, interdisciplinary approaches, and potential research challenges.

2026 UPDATE

Consistent Academic Support

Science Net ensures that research activities continue without interruption in the current global situation. Participants can engage through digital and hybrid conference formats.