2010
Autores
De Raedt, L; Kimmig, A; Gutmann, B; Kersting, K; Costa, VS; Toivonen, H;
Publicação
Inductive Databases and Constraint-Based Data Mining
Abstract
We study how probabilistic reasoning and inductive querying can be combined within ProbLog, a recent probabilistic extension of Prolog. ProbLog can be regarded as a database system that supports both probabilistic and inductive reasoning through a variety of querying mechanisms. After a short introduction to ProbLog, we provide a survey of the different types of inductive queries that ProbLog supports, and show how it can be applied to the mining of large biological networks. © 2010 Springer Science+Business Media, LLC.
2010
Autores
Caldas, P; Jorge, PAS; Araujo, FM; Ferreira, LA; Rego, G; Santos, JL; Berneschi, S; Cosi, F; Soria, S; Pelli, S; Conti, GN;
Publicação
FOURTH EUROPEAN WORKSHOP ON OPTICAL FIBRE SENSORS
Abstract
In this work we describe the characterization of high Q optical microresonators using an all fiber based system. Silica microspheres fabricated on a fiber tip by electric arc discharge are characterized using a simple interrogation system based on an adiabatic fiber taper coupler and on the collection of scattered radiation by a multimode fiber.
2010
Autores
Correia, F; Camacho, R; Lopes, JC;
Publicação
KDIR 2010: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND INFORMATION RETRIEVAL
Abstract
Collaborative Data Mining (CDM) develops techniques to solve complex problems of data analysis requiring sets of experts in different domains that may be geographically separate. An important issue in CDM is the sharing of experience among the different experts. In this paper we report on a framework that enables users with different expertise to perform data analysis activities and profit, in a collaborative fashion, from expertise and results of other researchers. The collaborative process is supported by web services that seek for relevant knowledge available among the collaborative web sites. We have successfully designed and deployed a prototype for collaborative Data Mining in domains of Molecular Biology and Chemoinformatics.
2010
Autores
Andersson, B; Pereira, N; Tovar, E; Pacheco, F;
Publicação
8th Workshop on Intelligent Solutions in Embedded Systems, WISES 2010, Heraklion, Crete, Greece, July 8-9, 2010
Abstract
Database query languages on relations (for example SQL) make it possible to join two relations. This operation is very common in desktop/server database systems but unfortunately query processing systems in networked embedded computer systems currently do not support this operation; specifically, the query processing systems TAG, TinyDB, Cougar do not support this. We show how a prioritized medium access control (MAC) protocol can be used to efficiently execute the database operation join for networked embedded computer systems where all computer nodes are in a single broadcast domain. © 2010 IEEE.
2010
Autores
Neto, P; Mendes, N; Pires, JN; Moreira, AP;
Publicação
2010 IEEE International Conference on Automation Science and Engineering
Abstract
2010
Autores
Gomes, TAF; Prudencio, RBC; Soares, C; Rossi, ALD; Carvalho, A;
Publicação
Proceedings - 2010 11th Brazilian Symposium on Neural Networks, SBRN 2010
Abstract
Support Vector Machines (SVMs) have achieved very good performance on different learning problems. However, the success of SVMs depends on the adequate choice of a number of parameters, including for instance the kernel and the regularization parameters. In the current work, we propose the combination of Meta-Learning and search techniques to the problem of SVM parameter selection. Given an input problem, Meta-Learning is used to recommend SVM parameters based on well-succeeded parameters adopted in previous similar problems. The parameters returned by Meta-Learning are then used as initial search points to a search technique which will perform a further exploration of the parameter space. In this combination, we envisioned that the initial solutions provided by Meta-Learning are located in good regions in the search space (i.e. they are closer to the optimum solutions). Hence, the search technique would need to evaluate a lower number of candidate search points in order to find an adequate solution. In our work, we implemented a prototype in which Particle Swarm Optimization (PSO) was used to select the values of two SVM parameters for regression problems. In the performed experiments, the proposed solution was compared to a PSO with random initialization, obtaining better average results on a set of 40 regression problems. © 2010 IEEE.
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