Our goal is to automate intelligent behavior by building robust probabilistic models for a complex world. The work has a strong basic research component that intersects artificial intelligence, machine learning, computer science, information theory and mathematical statistics. The results of this methodological work are applied to both scientific and industrial applications.
Research challenges
- Theoretical frameworks for probabilistic modeling. To develop computationally efficient, general-purpose methods for probabilistic modeling, focusing on issues related to model selection, parameter estimation and inference.
- Models for intelligent information access. In many modern information networks (like the Internet and various sensor networks), the data can not be found in a well structured format, and accessing the information may be a problem even if the information is in principle available. The goal is to apply probabilistic models to perform information retrieval tasks in these kinds of environments.
- Models for image analysis. To develop probabilistic methods for processing two- or three-dimensional measurement data, with applications in data visualization and de-noising, and in the analysis of brain imaging data.
- Models for information processing in the visual system of the brain. To develop probabilistic computational models that show how vision is possible in the brain, and to generalize these principles to different domains of computational neuroscience and computational intelligence.
- Models for probabilistic data fusion. To develop probabilistic methods for combining inputs originating from heterogeneous data sources.
- User modeling. To develop probabilistic modeling methods for personalization, profiling and segmentation.
Current Research Projects
- Neuroinformatics
- Modest: Applications of the MDL Principle to Prediction and Model Selection and Testing
- STAM: Algorithmic Methods in Stemmatology
- PinView: Personal Information Navigator Adapting Through Viewing
- SULRSL: Supervised Unsupervised Learning and Relevant Subtask Learning
- UI-ART: Urban contextual information interfaces with multimodal augmented reality
Past Research Projects
- PMMA: Probabilistic Methods for Microarray Data
- KUKOT: MDL-Based Methods for Image Denoising
- CLASS: Cognitive-Level Annotation using Latent Statistical Structures
- CIVI: Cognitively Inspired Visual Interfaces for Representing Multidimensional Information
- SIB: Search-ina-Box
- Alvis: Superpeer Semantic Search Engine
- PASCAL Pump Priming
Programme Management
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Programme Director: Professor Petri Myllymäki
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Programme Manager: Dr Teemu Roos
- Programme Management Group:
Research Groups
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Complex Systems Computation Group (CoSCo) Professor Petri Myllymäki
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Neuroinformatics Professor Aapo Hyvärinen
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Statistical Machine Learning and Bioinformatics Professor Samuel Kaski
Last updated on 16 Dec 2009 by WWW administrator - Page created on 13 Jan 2007 by Webmaster