我們將在Genetic and Evolutionary Computation Conference (GECCO 2026) 國(guó)際會(huì)議上舉辦"多模態(tài)數(shù)據(jù)驅(qū)動(dòng)優(yōu)化與學(xué)習(xí)"的 Workshop (MultiDOL@GECCO2026)。MultiDOL將聚焦多模態(tài)數(shù)據(jù)(圖像、文本、傳感器等)的表示學(xué)習(xí)、特征融合及進(jìn)化優(yōu)化方法,涵蓋機(jī)器人、智能制造、醫(yī)療健康等領(lǐng)域的實(shí)際應(yīng)用。歡迎大家賜稿并參加研討會(huì)!
GECCO 是 ACM 主辦的進(jìn)化計(jì)算領(lǐng)域旗艦會(huì)議(CCF-C 類(lèi)會(huì)議),匯聚了來(lái)自世界各國(guó)的進(jìn)化計(jì)算專(zhuān)家學(xué)者,并且有很多精彩的 keynotes、tutorials 和 panel discussions。MultiDOL@GECCO2026錄用的論文會(huì)直接進(jìn)入 GECCO Companion 論文集,由 ACM Digital Library 收錄,并包括在所有主流的索引里(例如 DBLP、EI index)。
主會(huì)網(wǎng)址:
https://gecco-2026.sigevo.org/HomePage
Workshop網(wǎng)址:
https://sites.google.com/view/gecco26-multidol/home
投稿截止日期:2026年4月3日
以下是Call for paper詳情,如有任何問(wèn)題,請(qǐng)聯(lián)系: yanxm@gdufs.edu.cn
Multimodal Data-Driven Optimization and Learning
July 13-17 , 2026
San Antonio de Belén, Alajuela, Costa Rica
https://sites.google.com/view/gecco26-multidol/home
Overview
Multimodal Data-Driven Optimization and Learning (MultiDOL) workshop focuses on addressing the growing need for integrating diverse data modalities—such as images, text, and sensor data—into evolutionary learning and optimisation frameworks. As real-world problems increasingly involve heterogeneous data sources, from autonomous systems combining visual and LiDAR data to healthcare applications fusing medical images and clinical records, traditional learning and optimization approaches must evolve.
This workshop explores novel methods for multimodal data integration in evolutionary algorithms, including multimodal representation learning, cross-modal feature fusion, and hybrid EC-deep learning approaches. We welcome contributions on theoretical foundations, algorithm design, benchmark development, and applications across areas, such as robotics, smart manufacturing, healthcare, and environmental monitoring. We brings together researchers from evolutionary computation, machine learning, computer vision, and application domains to address key questions: How can evolutionary algorithms effectively process information from multiple data modalities? What new optimization paradigms emerge when combining EC with modern multimodal AI including foundation models? How do we design appropriate benchmarks for these problems?
MultiDOL aims to foster collaborations between the EC community and multimodal AI researchers, establishing a foundation for sustained research in this emerging interdisciplinary area.
Topics
We welcome submissions on all aspects of multimodal data-driven optimization. Topics of interest include, but are not limited to:
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Evolutionary Algorithms for Multimodal Representation Learning and Fusion
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Neural Architecture Search (NAS) for Multimodal Deep Learning
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Synergy between Evolutionary Computation and Multimodal Foundation Models
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Multimodal Combinatorial Optimization (e.g., Routing, Scheduling, Planning)
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Surrogate-Assisted Optimization with Heterogeneous Data Inputs
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Real-world Applications: Robotics, Healthcare, Smart Manufacturing, and Digital Twins
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Benchmarks and Evaluation Metrics for Multimodal Optimization
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Datasets for Multimodal Optimization

Victoria University of Wellington, New Zealand
Invited Speakers:
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Talk Title: Automating Multimodal Machine Learning Using Optimisation
![]() Professor,
University of Pretoria, South Africa |
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Talk Title: Multimodal Learning and lts Applications in Brain Medicine
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Talk Title: Genetic Programming for Multimodal Machine Learning
![]() Professor,
Zhengzhou University, China |
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Additional invited speakers to be announced...
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Paper Submission:
Publication Policy
All accepted workshop papers will be published in the GECCO Companion Proceedings and included in the ACM Digital Library.
Paper Specifications
Interested participants are invited to submit full papers adhering to the following constraints:
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Paper Type: Full Papers
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Abstract Length: Maximum 200 words
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Page Limit: Maximum 8 pages (excluding references)
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Anonymity: All submissions must be ANONYMIZED for the double-blind review process.
Submission Format
All submissions must follow the official GECCO 2026 formatting guidelines (ACM Template).
Submission Site
Papers must be submitted via the GECCO paper submission website (select "Workshops" track and choose "Multimodal Data-Driven Optimization and Learning (MultiDOL)").
Review Process
All submitted papers will undergo a rigorous double-blind review process by the program committee.
Important Dates:
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Submission Deadline: April 3, 2026 -
Author Notification: April 24, 2026 -
Early Registration Deadline: May 11, 2026 -
Camera-Ready Deadline: TBD -
Workshop Date: TBD
Organizing Committee Co-Chairs:
Xueming Yan, Ph.D., Professor, SMIEEE, Guangdong University of Foreign Studies
(Email: yanxm@gdufs.edu.cn)
Bing Xue, Ph.D., Professor, FIEEE, FEngNZ, Victoria University of Wellington
(Email: bing.xue@ecs.vuw.ac.nz)
Yaochu Jin, Ph.D., Chair Professor of AI, MAE, FIEEE, Westlake University
(Email: jinyaochu@westlake.edu.cn)
Affiliated Laboratory:
Trustworthy and General Artificial Intelligence Laboratory (TGAI)

可信及通用人工智能實(shí)驗(yàn)室(TGAI)

金耀初實(shí)驗(yàn)室(可信及通用人工智能實(shí)驗(yàn)室)同時(shí)致力于應(yīng)用驅(qū)動(dòng)的可信人工智能研究及其在工業(yè)、科學(xué)和藝術(shù)中的應(yīng)用,以及采用演化發(fā)育方法探索實(shí)現(xiàn)通用人工智能的新途徑。主要研究方向包括:
1) 可信人工智能方向: 安全、隱私保護(hù)及公平的數(shù)據(jù)驅(qū)動(dòng)的優(yōu)化與學(xué)習(xí);基于圖神經(jīng)網(wǎng)絡(luò)及擴(kuò)散模型的優(yōu)化與學(xué)習(xí);基于大模型的通用優(yōu)化與決策;大模型自動(dòng)驗(yàn)證;
2) 類(lèi)腦具身智能方向: 大規(guī)模類(lèi)腦脈沖神經(jīng)網(wǎng)絡(luò);具身智能系統(tǒng)的自主演進(jìn);具身安全與具身大模型;具身系統(tǒng)的控制與形態(tài)的協(xié)同發(fā)育與演化;
3) AI for Science & Art方向: 人工智能納米材料-蛋白質(zhì)/植物-環(huán)境互作;人工智能醫(yī)學(xué)診斷/康復(fù);人工智能藝術(shù)診療。
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