The IJCAI-09 Workshop on Machine Learning and AI Applications in Astrophysics and Cosmology
Pasadena, California, July 16 - 17, 2009
Presentations:
Djorgovski: Setting the stage: the goals of the workshop
Ball: Data Mining and Machine Learning in Astronomy
Borne: The VO and Large Surveys: What More Do We Need?
Longo: Astronomical data mining: Renaissance or dark age?
Connolly: Scaling Up and Scaling Out
Myers: The Death of Spectroscopy
Mahabal: Combining diverse classifiers in the time domain
Khardon: From Raw Measurements to Clean Catalogs: Automatic Filtering and Classification of Variable Stars in the MACHO Survey
Wozniak: Mining the sky in real time
Babu: Understanding 21st Century Astronomical Data Cubes
van Dyk: Astrostatistics: Complex Models and Complex Questions
Schneider: Active Learning for Fitting Simulations to Observational Data
Jojic: Could existing computer vision tools assist/replace humans in the Galaxy Zoo?
Kubica: Scaling up Data Streams for Asteroid Tracking
Roweis: Making The Sky Searchable: Large Scale Astronomical Pattern Recognition
Freeman: Measurement Error and Estimator Bias
Lee: High-dimensional Inference for Large Data Sets
Sen: Separating Signal from Background
Graham: Philosophical Languages in the 21st Century
Gil & Deelman: Semantic Workflow Reasoning for Scientific Data Analysis
Gray: Machine learning on massive datasets