19ème séminaire du groupe POC
Le MERCREDI 27 MARS 2019
For security reasons, we must provide to the security service the complete list of people registered.
They will check each participant name with identity card.
Registration is now closed (from March 20 at 12:00)
Click here to see the list of registered participants
The seminar will take place at the Sorbonne, Paris1 Panthéon-Sorbonne University,
Warning: there are two different places for the talks
See this map for the 3minutes trip between the two places
Center Pantheon : 131-133, rue Saint-Jacques (or 12 place du Panthéon)
- Amphitheater 2A entrance by Hall Saint Jacques
- Decanal Appartment for the Lunch and the Closing Reception
The Sorbonne: 17, place de la Sorbonne
- Amphitheater Richelieu
Data Science aims to develop models that extract knowledge from complex data and represent it to aid Data Driven Decision Making. Mathematical Optimization has played a crucial role across the three main pillars of Data Science, namely Supervised Learning, Unsupervised Learning and Information Visualization. In this presentation, we discuss recent Mixed-Integer NonLinear Programming models that enhance the interpretability of state-of-art supervised learning tools, while preserving their good learning performance.
A critical issue in classification and regression problems is how cost is taken into account. This involves both the measurement cost (and thus, we are interested in having sparse models, since less variables are used) and misclassification/regression errors, which may be of different magnitude and hard to callibrate.
In this talk we will discuss a few classification and regression models in which (Mixed Integer) Nonlinear Programming turns out to be a critical tool to address and control such cost-sensitive problems.
The attendent are kindly invited to a lunck buffet at the Decanal appartement.
The Maximum Clique Problem is a fundamental NP-hard problem in graph theory which finds numerous real-life applications, such as pattern-recognition in data science. In the last decade a number of new upper bounds and implementation techniques have come to light, which have improved the performance of prior exact solvers by orders of magnitude. The relevance of these improvements has been such that there has been an upsurge of interest in solving other complex combinatorial problems and applications by reducing them to a maximum clique problem.
In this talk, some of the cutting edge improvements concerning exact maximum clique search will be discussed. Special attention will be devoted to the relation of these techniques with other combinatorial problems. At the end of the talk, the topic of pattern-recognition applications concerning cliques will also be addressed.