| |||||||||||||||||
SUM 2024 : 16th International Conference on Scalable Uncertainty ManagementConference Series : Scalable Uncertainty Management | |||||||||||||||||
Link: https://sum2024.unipa.it/ | |||||||||||||||||
| |||||||||||||||||
Call For Papers | |||||||||||||||||
The 16th International Conference on Scalable Uncertainty Management (SUM 2024)
November 27-29, 2024, Palermo, Italy Established in 2007, the SUM conferences aim to gather researchers with a common interest in managing and analyzing imperfect information from a wide range of fields, such as Artificial Intelligence and Machine Learning, Uncertain reasoning, Databases, Information Retrieval and Data Mining, the Semantic Web and Risk Analysis, and with the aim of fostering collaboration and cross-fertilization of ideas from the different communities. An originality of the SUM conferences is their care for dedicating a large space of their program to tutorials covering a wide range of topics related to uncertainty management. Each tutorial provides a survey of one of the research areas in the scope of the conference. The SUM conferences were originally held annually. However, starting from 2020, they became biennial events, occurring every two years. The first SUM conference was held in Washington DC in 2007. Since then, the SUM conferences have successively taken place in Naples (2008), Washington DC (2009), Toulouse (2010), Dayton, (2011), Marburg (2012), Washington DC (2013), Oxford (2014), Québec (2015), Nizza (2016), Granada (2017), Milan (2018), Compiègne (2019), Bolzano (2020), Paris (2022). The 16th International Conference on Scalable Uncertainty Management (SUM) will be held in Palermo, Italy on November 27-29, 2024. We solicit papers on the management of large amounts of complex kinds of uncertain, incomplete, or inconsistent information. We are particularly interested in papers that focus on bridging gaps, for instance between different communities, between numerical and symbolic approaches, or between theory and practice. Topics of interest include (but are not limited to): Imperfect information in databases Methods for modeling, indexing, and querying uncertain databases Top-k queries, skyline query processing, and ranking Approximate, fuzzy query processing Uncertainty in data integration and exchange Uncertainty and imprecision in geographic information systems Probabilistic databases and possibilistic databases? Data provenance and trust Data summarization Very large datasets Imperfect information in information retrieval and semantic web applications Approximate schema and ontology matching Uncertainty in description logics and logic programming Learning to rank, personalization, and user preferences Probabilistic language models Combining vector-space models with symbolic representations Inductive reasoning for the semantic web Imperfect information in artificial intelligence Statistical relational learning, graphical models, probabilistic inference Argumentation, defeasible reasoning, belief revision Weighted logics for managing uncertainty Reasoning with imprecise probability, Dempster-Shafer theory, possibility theory Approximate reasoning, similarity-based reasoning, analogical reasoning Planning under uncertainty, reasoning about actions, spatial and temporal reasoning Incomplete preference specifications Learning from data Risk analysis Aleatory vs. epistemic uncertainty Uncertainty elicitation methods Uncertainty propagation methods Decision analysis methods Tools for synthesizing results |
|