Catálogo de publicaciones - libros

Compartir en
redes sociales


Applications of Fuzzy Sets Theory: 7th International Workshop on Fuzzy Logic and Applications, WILF 2007, Camogli, Italy, July 7-10, 2007. Proceedings

Francesco Masulli ; Sushmita Mitra ; Gabriella Pasi (eds.)

En conferencia: 7º International Workshop on Fuzzy Logic and Applications (WILF) . Camogli, Italy . July 7, 2007 - July 10, 2007

Resumen/Descripción – provisto por la editorial

No disponible.

Palabras clave – provistas por la editorial

Artificial Intelligence (incl. Robotics); Mathematical Logic and Formal Languages; Computation by Abstract Devices; Information Storage and Retrieval; Database Management; Image Processing and Computer Vision

Disponibilidad
Institución detectada Año de publicación Navegá Descargá Solicitá
No detectada 2007 SpringerLink

Información

Tipo de recurso:

libros

ISBN impreso

978-3-540-73399-7

ISBN electrónico

978-3-540-73400-0

Editor responsable

Springer Nature

País de edición

Reino Unido

Fecha de publicación

Información sobre derechos de publicación

© Springer-Verlag Berlin Heidelberg 2007

Tabla de contenidos

Reconstruction Methods for Incomplete Fuzzy Preference Relations: A Numerical Comparison

Matteo Brunelli; Michele Fedrizzi; Silvio Giove

In this paper we compare, by means of numerical simulations, seven different methods for reconstructing incomplete fuzzy preference relations. We consider the case of highly inconsistent preference relations as well as the case of preference relations close to consistency. We compare the numerical results on the basis of the consistency of the reconstructed preference relations.

Palabras clave: Reconstruction Method; Pairwise Comparison Matrix; Preference Matrix; Priority Vector; Goal Programming Model.

- Advances in Fuzzy Set Theory | Pp. 86-93

Web User Profiling Using Fuzzy Clustering

Giovanna Castellano; Fabrizio Mesto; Michele Minunno; Maria Alessandra Torsello

Web personalization is the process of customizing a Web site to the preferences of users, according to the knowledge gained from usage data in the form of user profiles. In this work, we experimentally evaluate a fuzzy clustering approach for the discovery of usage profiles that can be effective in Web personalization. The approach derives profiles in the form of clusters extracted from preprocessed Web usage data. The use of a fuzzy clustering algorithm enable the generation of overlapping clusters that can capture the uncertainty among Web users navigation behavior based on their interest. Preliminary experimental results are presented to show the clusters generated by mining the access log data of a Web site.

Palabras clave: Web mining; Fuzzy clustering; access log; Web personalization; user profiling.

- Fuzzy Information Access and Retrieval | Pp. 94-101

Exploring the Application of Fuzzy Logic and Data Fusion Mechanisms in QAS

Daniel Ortiz-Arroyo; Hans Ulrich Christensen

In this paper we explore the application of fuzzy logic and data fusion techniques to improve the performance of passage retrieval in open domain Question Answering Systems (QAS) . Our experiments show that our proposed mechanisms provide significant performance improvements when compared to other similar systems.

Palabras clave: Information Retrieval; Question Answering Systems; Passage Retrieval; Fuzzy Logic.

- Fuzzy Information Access and Retrieval | Pp. 102-109

Fuzzy Indices of Document Reliability

Célia da Costa Pereira; Gabriella Pasi

This paper presents a first step toward the formalization of the concept of document reliability in the context of Information Retrieval (and Information Filtering). Our proposal is based on the hypothesis that the evaluation of the relevance of a document can also depend on the concept of reliability of a document. This concept has the following properties: (i) it is user-dependent, i.e., a document may be reliable for a user and not reliable for another user; (ii) it is source-dependent, i.e., the source which a document comes from may influence its reliability for a user; and (iii) it is also author-dependent, i.e., the information about who wrote the document may also influence the user when assessing the reliability of a document.

Palabras clave: Information Source; Document Relevance; User Trust; Trust Degree; Information Filter.

- Fuzzy Information Access and Retrieval | Pp. 110-117

Fuzzy Ontology, Fuzzy Description Logics and Fuzzy-OWL

Silvia Calegari; Davide Ciucci

The conceptual formalism supported by an ontology is not sufficient for handling vague information that is commonly found in many application domains. We describe how to introduce fuzziness in an ontology. To this aim we define a framework consisting of a fuzzy ontology based on Fuzzy Description Logic and Fuzzy–Owl.

Palabras clave: Resource Description Framework; Description Logic; Fuzzy Relation; Fuzzy Constraint; Fuzzy Ontology.

- Fuzzy Information Access and Retrieval | Pp. 118-126

An Improved Weight Decision Rule Using SNNR and Fuzzy Value for Multi-modal HCI

Jung-Hyun Kim; Kwang-Seok Hong

In this paper, we suggest an improved weight decision rule depending on SNNR (Signal Plus Noise to Noise Ratio) and fuzzy value for simultaneous multi-modality including a synchronization between audio-gesture modalities. In order to insure the validity of the suggested weight decision rule, we implement a wireless PDA-based Multi-Modal Fusion Architecture (hereinafter, MMFA) by coupling embedded speech and KSSL recognizer, which fuses and recognizes 130 word-based instruction models that are represented by speech and KSSL (Korean Standard Sign Language), and then translates recognition result into synthetic speech (TTS) and visual illustration in real-time. In the experimental results, the average recognition rate of the MMFA fusing 2 sensory channels based on wireless PDA was 96.54% in clean environments (e.g. office space), and 93.21% in noisy environments, with the 130 word-based instruction models.

Palabras clave: Speech Recognition; Hand Gesture; Noisy Environment; Hand Gesture Recognition; Speech Recognizer.

- Fuzzy Machine Learning | Pp. 127-135

DWT-Based Audio Watermarking Using Support Vector Regression and Subsampling

Xiaojuan Xu; Hong Peng; Chengyuan He

How to protect the copyright of digital media over the Internet is a problem for the creator/owner. A novel support vector regression (SVR) based digital audio watermarking scheme in the wavelet domain which using subsampling is proposed in this paper. The audio signal is subsampled and all the sub-audios are decomposed into the wavelet domain respectively. Then the watermark information is embedded into the low-frequency region of random one sub-audio. With the high correlation among the sub-audios, accordingly, the distributing rule of different sub-audios in the wavelet domain is similar to each other, SVR can be used to learn the characteristics of them. Using the information of unmodified template positions in the low-frequency region of the wavelet domain, the SVR can be trained well. Thanks to the good learning ability of SVR, the watermark can be correctly extracted under several different attacks. The proposed watermarking method which doesn’t require the use of the original audio signal for watermark extraction can provide a good copyright protection scheme. The experimental results show the algorithm is robust to signal processing, such as lossy compression (MP3), filtering, resampling and requantizing, etc.

Palabras clave: Support Vector Regression; Audio Signal; Watermark Scheme; Wavelet Domain; Watermark Extraction.

- Fuzzy Machine Learning | Pp. 136-144

Improving the Classification Ability of DC^* Algorithm

Corrado Mencar; Arianna Consiglio; Giovanna Castellano; Anna Maria Fanelli

DC^* (Double Clustering by A^*) is an algorithm for interpretable fuzzy information granulation of data. It is mainly based on two clustering steps. The first step applies the LVQ1 algorithm to find a suitable representation of data relationships. The second clustering step is based on the A^* search strategy and is aimed at finding an optimal number of fuzzy granules that can be labeled with linguistic terms. As a result, DC* is able to linguistically describe hidden relationships among available data. In this paper we propose an extension of the DC^* algorithm, called DC $^{*} _{1.1}$ , which improves the generalization ability of the original DC^* by modifying the A^* search procedure. This variation, inspired by Support Vector Machines, results empirically effective as reported in experimental results.

Palabras clave: DC ; Interpretability; Fuzzy Information Granulation.

- Fuzzy Machine Learning | Pp. 145-151

Combining One Class Fuzzy KNN’s

Vito Di Gesù; Giosuè Lo Bosco

This paper introduces a parallel combination of N  > 2 one class fuzzy KNN ( FKNN ) classifiers. The classifier combination consists of a new optimization procedure based on a genetic algorithm applied to FKNN ’s, that differ in the kind of similarity used. We tested the integration techniques in the case of N  = 5 similarities that have been recently introduced to face with categorical data sets. The assessment of the method has been carried out on two public data set, the Masquerading User Data (www.schonlau.net) and the badges database on the UCI Machine Learning Repository (http://www.ics.uci.edu/~mlearn/). Preliminary results show the better performance obtained by the fuzzy integration respect to the crisp one.

Palabras clave: Fuzzy classification; genetic algorithms; similarity.

- Fuzzy Machine Learning | Pp. 152-160

Missing Clusters Indicate Poor Estimates or Guesses of a Proper Fuzzy Exponent

Ulrich Möller

The term ‘missing cluster’ (MC) is introduced as an undesirable feature of fuzzy partitions. A method for detecting persistent MCs is shown to improve the choice of proper fuzzy parameter values in fuzzy C-means clustering when compared to other methods. The comparison was based on simulated data and gene expression profiles of cancer.

Palabras clave: Gene Expression Data; Fuzzy Cluster; Reference Class; Poor Estimate; Fuzzy Partition.

- Fuzzy Machine Learning | Pp. 161-169