Algorithms Seminar/Fall10
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First we will overview different models of uncertainty, tracing their origins and motivation (Many-world models in databases, imprecision models in geometry, probabilistic models in databases). | First we will overview different models of uncertainty, tracing their origins and motivation (Many-world models in databases, imprecision models in geometry, probabilistic models in databases). | ||
Then we will proceed to survey recent developments in computational geometry, databases, visualization, and machine learning and statistics. | Then we will proceed to survey recent developments in computational geometry, databases, visualization, and machine learning and statistics. | ||
| - | + | * The computational geometry section will describe basic algorithmic tools and analysis several models of uncertain data. | |
| - | + | * The databases section will focus on data structures to manage and process large amounts of uncertain data concisely. | |
| - | + | * The visualization section will look at models for data uncertainty for surfaces and volumes, and how the resulting data is visualized. | |
| - | + | * The machine learning and statistics section will cover classic techniques for learning and detecting uncertainty. | |
Through this seminar, participants will gain an understanding of the state-of-the-art in modeling and processing uncertain data and will be exposed to several important open problems and exciting research directions. | Through this seminar, participants will gain an understanding of the state-of-the-art in modeling and processing uncertain data and will be exposed to several important open problems and exciting research directions. | ||
Revision as of 04:53, 5 August 2010
Modelling Data With Uncertainty
Wed 1:25-2:45pm
MEB 3147 (LCR)
Contents |
Synopsis
We will cover many recent developments in the modeling and processing of uncertain data in computer science. The seminar will focus and the modeling, algorithmic, and data-structural foundations needed for understanding, processing, and visualizing uncertain data. First we will overview different models of uncertainty, tracing their origins and motivation (Many-world models in databases, imprecision models in geometry, probabilistic models in databases). Then we will proceed to survey recent developments in computational geometry, databases, visualization, and machine learning and statistics.
- The computational geometry section will describe basic algorithmic tools and analysis several models of uncertain data.
- The databases section will focus on data structures to manage and process large amounts of uncertain data concisely.
- The visualization section will look at models for data uncertainty for surfaces and volumes, and how the resulting data is visualized.
- The machine learning and statistics section will cover classic techniques for learning and detecting uncertainty.
Through this seminar, participants will gain an understanding of the state-of-the-art in modeling and processing uncertain data and will be exposed to several important open problems and exciting research directions.
Participants
- Jeff Phillips
- Suresh Venkatasubramanian
Schedule
(subject to change)
| Date | Topic | Outline and Paper(s) | Presenter |
|---|---|---|---|
| Aug 25 | Models of Data Uncertainty | Motivation behind modeling Uncertainty. Survey different models and where they arise. | Jeff Phillips |
| Geometry | |||
| Sep 1 | Range Spaces and epsilon-Samples | How well does random sampling work? Define important geometric-combinatorial notions: Range spaces, eps-nets, eps-samples. Prove random sampling bound for eps-samples (Sariel's Notes). Show cool application of eps-nets on uncertain data in sensor nets(eps-Sentinals) | |
| Sep 8 | Epsilon-Quantizations and Epsilon-SIPs | Modeling questions on uncertain data with probability distributions. Review specific applications to smallest enclosing ball. (Shape Fitting on Point Sets with Probability Distributions) | |
| Sep 15 | Geometry on Imprecise Points | Imprecision in data. eps-geometry for rounding errors (eps-Geometry). More general geometry problems: Basic Geometry Measures on Imprecise Points and maybe Largest and Smallest Convex Hulls on Imprecise Points | |
| Sep 22 | Hardness of Uncertainty Problems | Its not always easy! What is #P-Hard. Basic problems that are(Efficient Query Evaluation on Probabilistic Databases). LP-type problems. Non-LP-type problems that are #P-Hard([see Jeff for preprint]) | |
| Databases | |||
| Sep 29 | Sketching and Streaming | Sketching probabilistic data streams | |
| Oct 6 | Histograms | Histograms and wavelets on probabilistic data Probabilistic Histograms for Probabilistic Data | |
| Oct 20 | Ranking | A Unified Approach to Ranking in Probabilistic Databases with slides and Semantics of ranking queries for probabilistic data and expected ranks | |
| Oct 27 | Clustering | Approximation Algorithms for Clustering Uncertain Data | |
| Visualization | |||
| Nov 3 | Noisy Surfaces | How to sample from uncertain objects (surfaces) and retain structure. Visualizing resulting samples. | |
| Nov 10 | Transfer Functions | Maintaining and visualizing more complicated domains under uncertainty. | |
| Machine Learning And Statistics | |||
| Nov 17 | Support Vector Machines | Classifying uncertain data. Support Vector Classification with Input Data Uncertainty | |
| Nov 24 | Markov Random Fields | Harnessing Locality. | |
| Dec 1 | Particle Filters | Maintaining uncertain estimates. | |
| Dec 8 | Multi-Armed Bandits | Trading off investigation of uncertainty and rewards. | |