Call For Papers
The First International Workshop on Spatio-Temporal Reasoning and Learning (STRL 2022), collocated with IJCAI-ECAI 2022 (https://ijcai-22.org/)
Website: https://strl2022.github.io/
Introduction
Opposing the false dilemma of logical reasoning vs machine learning, we argue for a synergy between these two paradigms in order to obtain hybrid AI systems that will be robust, generalizable, and transferable. Indeed, it is well-known that machine learning only includes statistical information and, therefore, is not inherently able to capture perturbations (interventions or changes in the environment), or perform reasoning and planning. Ideally, (the training of) machine learning models should be tied to assumptions that align with physics and human cognition to allow for these models to be re-used and re-purposed in novel scenarios. On the other hand, it is also the case that logic in itself can be brittle too, and logic further assumes that the symbols with which it can reason are already given. It is becoming ever more evident in the literature that modular AI architectures should be prioritized, where the involved knowledge about the world and the reality that we are operating in is decomposed into independent and recomposable pieces, as such an approach should only increase the chances that these systems behave in a causally sound manner.
The aim of this workshop is to formalize such a synergy between logical reasoning and machine learning that will be grounded on spatial and temporal knowledge. We argue that the calculi associated with the spatial and temporal reasoning community, be it qualitative or quantitative, naturally build upon physics and human cognition, and could therefore form a module that would be beneficial towards causal representation learning. As an example, in the on-going IJCAI Angry Birds competitions (http://aibirds.org/angry-birds-ai-competition.html), machine learning models generally struggle to achieve good performance, because there is no sufficient encoding of spatial and temporal structure and relations; shooting a bird with a given trajectory can clearly have some very well determined effect (based on the laws of physics), which could in turn cause a chain of effects to occur, but machine learning models are not able to capture this behavior, for the reasons mentioned earlier. A (symbolic) spatio-temporal knowledge base could provide a dependable causal seed upon which machine learning models could generalize, and exploring this direction from various perspectives is the main theme of this workshop.
Topics
In this workshop, we invite the research community in artificial intelligence to submit works related to the proposed integration of spatial and temporal reasoning with machine learning, revolving around the following topic areas:
§ Real-world problems / applications of spatio-temporal reasoning and learning
§ Challenges in spatio-temporal reasoning and learning
§ Neuro-symbolic approaches for spatio-temporal reasoning and learning
§ Probabilistic world models for spatio-temporal reasoning and learning
§ Probabilistic inference for spatio-temporal reasoning and learning
§ Datasets for spatio-temporal reasoning and learning
§ Metrics for assessing spatio-temporal reasoning and learning methods
§ Limitations in machine learning for spatio-temporal reasoning and learning; how far can machine learning go?
§ Relation between causal reasoning and spatial and temporal reasoning
The list above is by no means exhaustive, as the aim is to foster the debate around all aspects of the suggested integration.
Submission
Guidelines
Papers should be formatted according to the IJCAI-ECAI 2022 formatting guidelines for the Conference Track. We welcome submissions across the full spectrum of theoretical and practical work including research ideas, methods, tools, simulations, applications or demos, practical evaluations, and surveys. Submissions that are 2 pages long (excluding references) will be considered for a poster, and submissions that are at least 4 pages and up to 6 pages long (excluding references) will be considered for an oral presentation. All papers will be peer-reviewed in a single-blind process and assessed based on their novelty, technical quality, potential impact, clarity, and reproducibility (when applicable). Workshop submissions and camera-ready versions will be handled by EasyChair; the submission link is as follows: https://easychair.org/conferences/?conf=strl2022
Important Dates (Tentative)
May 13, 2022: Workshop Paper Due Date
June 3, 2022: Notification of Paper Acceptance
June 17, 2022: Camera-ready papers due
Note: all deadlines are Central European Time (CET), UTC +1, Paris, Brussels, Vienna.
Organizing Committee
Dr. Michael Sioutis, University of Bamberg, Germany
Dr. Zhiguo Long, Southwest Jiaotong University, Chengdu, China
Dr. John Stell, Leeds University, UK
Prof. Jochen Renz, Australian National University, Australia
Program Committee (Tentative)
- Bettina Finzel, University of Bamberg, Germany
- Bo Peng, Southwest Jiaotong University, Chengdu, China
- Esra Erdem, Sabancı University, Istanbul, Turkey
- Jie Hu, Southwest Jiaotong University, Chengdu, China
- Marjan Alirezaie, Örebro University, Sweden
- Ute Schmidt, University of Bamberg, Germany
- Devendra Singh Dhami, Technical University of Darmstadt, Germany
- Diedrich Wolter, University of Bamberg, Germany
- Fredrik Heintz, Linköping University, Sweden
- Hans Guesgen, Massey University, New Zealand
- Jae Hee Lee, University of Hamburg, Germany
- Jochen Renz, Australian National University, Canberra, Australia (co-chair)
- John Stell, University of Leeds, United Kingdom (co-chair)
- Kristian Kersting, Technical University of Darmstadt, Germany
- Mehul Bhatt, Örebro University, Sweden
- Michael Sioutis, University of Bamberg, Germany (co-chair)
- Tianrui Li, Southwest Jiaotong University, Chengdu, China
- Zhiguo Long, Southwest Jiaotong University, Chengdu, China (co-chair)
Contact
All questions about submissions should be emailed to strl2022 at easychair.org