2009
Authors
Pereira, P; Silva, F; Fonseca, NA;
Publication
2ND INTERNATIONAL WORKSHOP ON PRACTICAL APPLICATIONS OF COMPUTATIONAL BIOLOGY AND BIOINFORMATICS (IWPACBB 2008)
Abstract
We present a new, efficient and scalable tool, named BIORED, for pattern discovery in proteomic and genomic sequences. It uses a genetic algorithm to find interesting patterns in the form of regular expressions, and a new efficient pattern matching procedure to count pattern occurrences. We studied the performance, scalability and usefulness of BIORED using several databases of biosequences. The results show that BIORED was successful in finding previously known patterns, thus an excellent indicator for its potential. BIORED is available for download under the GNU Public License at http://www.dcc.fc.up.pt/bi-ored/. An online demo is available at the same address.
2009
Authors
Fonseca, NA; Costa, VS; Rocha, R; Camacho, R; Silva, F;
Publication
SOFTWARE-PRACTICE & EXPERIENCE
Abstract
Inductive logic programming (ILP) is a sub-field of machine learning that provides an excellent framework for multi-relational data mining applications. The advantages of ILP have been successfully demonstrated in complex and relevant industrial and scientific problems. However, to produce valuable models, ILP systems often require long running times and large amounts of memory. In this paper we address fundamental issues that have direct impact on the efficiency of ILP systems. Namely, we discuss how improvements in the indexing mechanisms of an underlying logic programming system benefit ILP performance. Furthermore, we propose novel data structures to reduce memory requirements and we suggest a new lazy evaluation technique to search the hypothesis space more efficiently. These proposals have been implemented in the April ILP system and evaluated using several well-known data sets. The results observed show significant improvements in running time without compromising the accuracy of the models generated. Indeed, the combined techniques achieve several order of magnitudes speedup in some data sets. Moreover, memory requirements are reduced in nearly half of the data sets. Copyright (C) 2008 John Wiley & Sons, Ltd.
2009
Authors
Fonseca, NA; Srinivasan, A; Silva, F; Camacho, R;
Publication
MACHINE LEARNING
Abstract
The growth of machine-generated relational databases, both in the sciences and in industry, is rapidly outpacing our ability to extract useful information from them by manual means. This has brought into focus machine learning techniques like Inductive Logic Programming (ILP) that are able to extract human-comprehensible models for complex relational data. The price to pay is that ILP techniques are not efficient: they can be seen as performing a form of discrete optimisation, which is known to be computationally hard; and the complexity is usually some super-linear function of the number of examples. While little can be done to alter the theoretical bounds on the worst-case complexity of ILP systems, some practical gains may follow from the use of multiple processors. In this paper we survey the state-of-the-art on parallel ILP. We implement several parallel algorithms and study their performance using some standard benchmarks. The principal findings of interest are these: (1) of the techniques investigated, one that simply constructs models in parallel on each processor using a subset of data and then combines the models into a single one, yields the best results; and (2) sequential (approximate) ILP algorithms based on randomized searches have lower execution times than (exact) parallel algorithms, without sacrificing the quality of the solutions found.
2009
Authors
Freitas, A; Costa Pereira, A; Brazdil, P;
Publication
Complex Data Warehousing and Knowledge Discovery for Advanced Retrieval Development: Innovative Methods and Applications
Abstract
Classification plays an important role in medicine, especially for medical diagnosis. Real-world medical applications often require classifiers that minimize the total cost, including costs for wrong diagnosis (misclassifications costs) and diagnostic test costs (attribute costs). There are indeed many reasons for considering costs in medicine, as diagnostic tests are not free and health budgets are limited. In this chapter, the authors have defined strategies for cost-sensitive learning. They have developed an algorithm for decision tree induction that considers various types of costs, including test costs, delayed costs and costs associated with risk. Then they have applied their strategy to train and to evaluate cost-sensitive decision trees in medical data. Generated trees can be tested following some strategies, including group costs, common costs, and individual costs. Using the factor of "risk" it is possible to penalize invasive or delayed tests and obtain patient-friendly decision trees. © 2010, IGI Global.
2009
Authors
Freitas, A; Brazdil, P; Costa Pereira, A;
Publication
Data Mining and Medical Knowledge Management: Cases and Applications
Abstract
This chapter introduces cost-sensitive learning and its importance in medicine. Health managers and clinicians often need models that try to minimize several types of costs associated with healthcare, including attribute costs (e.g. the cost of a specific diagnostic test) and misclassification costs (e.g. the cost of a false negative test). In fact, as in other professional areas, both diagnostic tests and its associated misclassification errors can have significant financial or human costs, including the use of unnecessary resource and patient safety issues. This chapter presents some concepts related to cost-sensitive learning and cost-sensitive classification and its application to medicine. Different types of costs are also present, with an emphasis on diagnostic tests and misclassification costs. In addition, an overview of research in the area of cost-sensitive learning is given, including current methodological approaches. Finally, current methods for the cost-sensitive evaluation of classifiers are discussed. © 2009, IGI Global.
2009
Authors
Brito, PQ;
Publication
International Journal of Retail and Distribution Management
Abstract
Purpose: The purpose of this paper is to investigate how and to what extent the attributes of a new shopping centre entrant evolve during the first seven months of operation, and the implications this has for the incumbents. To capture the strategic relevance of those changes a consumer image tracking analytical tool is developed and applied. Design/methodology/approach: Qualitative research followed by a longitudinal survey. Hypothesis testing approach and descriptive analysis. Findings: The correlates between the magnitudes of shopping centre attribute perception variations, the level of self-confidence in image evaluation, shopping centre frequency of visits, degree of the "halo effect", shopping centre and store consumer's preferences are analysed. Only the self-confidence and store preference did not evolve with the image magnitude changes as hypothesised. Research limitations/implications: The assessment of shopping centre image changes over time, as well as the factors underlying those changes help managers to plan strategy. Some monitoring procedures are proposed and their implications for both marketing and shopping centre operations are discussed. Originality/value: By incorporating the time dimension, the true nature of image variation can only be captured if the identification of attributes, and the amount, intensity and direction of changes are obtained, measured and analysed together. The magnitude of image variation is more associated with a shopping centre than with its stores. © Emerald Group Publishing Limited.
The access to the final selection minute is only available to applicants.
Please check the confirmation e-mail of your application to obtain the access code.