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CIMA 2021 : 9th International Workshop on Combinations of Intelligent Methods and Applications | |||||||||||||||
Link: http://aigroup.ceid.upatras.gr/cima2021/ | |||||||||||||||
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Call For Papers | |||||||||||||||
The combination of different intelligent methods is a very active research area in Artificial Intelligence (AI). The aim is to create integrated or hybrid methods that benefit from each of their components. It is generally believed that complex problems can be easier solved with such integrated or hybrid methods. Some of the existing efforts combine what are called soft computing methods (fuzzy logic, neural networks and evolutionary algorithms) either among themselves or with more traditional AI technologies such as logic and rules. Another stream of efforts integrates case-based reasoning and machine learning with soft computing and traditional AI methods. Yet another integrates agent-based approaches with logic and non-symbolic approaches. Some of the combinations have been quite important and have been more extensively used, like neuro-symbolic methods, neuro-fuzzy methods and methods combining rule-based and case-based reasoning. However, there are other combinations that are still under investigation, such as those related to semantic web and deep learning as well as to swarm intelligence algorithms. In some cases, combinations are based on first principles, but in most cases, they are created in the context of specific applications.
The Workshop is intended to become annual forum for exchanging experience and ideas among researchers who are dealing with combining intelligent methods either based on first principles or in the context of specific applications. Topics of interest include (but not limited to) the following: Topics of interest include (but are not limited to) the following: Bayesian Networks Case-Based Reasoning Deep Learning Ensemble learning, Ensemble methods Evolutionary Algorithms Evolutionary Neural Systems Expert Systems and Knowledge-based Systems Fuzzy-Evolutionary Systems Hybrid Approaches for the Web Hybrid Knowledge Representation Methods & Approaches Hybrid and Distributed Ontologies Information Fusion Techniques Integrations of Neural Networks Intelligent Agents Integrations Integrations of Statistical and Symbolic AI Approaches Intelligent Agents Integrations Machine Learning Combinations Neuro-Fuzzy Approaches/Systems Reinforcement learning Semantic Web Technologies Integrations Swarm intelligence methods & integrations Applications Agents & Multi-agent Systems Big Data Biology, Computational Biology & Bioinformatics Decision Support and Recommender systems Economics, Business and Forecasting Applications Education & Distance Learning Industrial & Engineering applications Medicine & Health Care Multimodal Human Computer Interaction Natural language Processing and Understanding Planning, Scheduling, Search & Optimization Robotics Social Networks This year we are very interested in combinations of intelligent methods for sentiment analysis and emotion recognition. |
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