//]]>
Normal View MARC View ISBD View

Towards Advanced Data Analysis by Combining Soft Computing and Statistics

by Borgelt, Christian.
Authors: Gil, María Ángeles.%editor. | Sousa, João M.C.%editor. | Verleysen, Michel.%editor. | SpringerLink (Online service) Series: Studies in Fuzziness and Soft Computing, 1434-9922 ; . 285 Physical details: X, 378 p. 73 illus. online resource. ISBN: 3642302785 Subject(s): Engineering. | Computer science. | Data mining. | Computer simulation. | Engineering. | Computational Intelligence. | Probability and Statistics in Computer Science. | Data Mining and Knowledge Discovery. | Simulation and Modeling.
Tags from this library:
No tags from this library for this title.
Item type Location Call Number Status Date Due
E-Book E-Book AUM Main Library 006.3 (Browse Shelf) Not for loan

From the Contents: Arithmetic and Distance-Based Approach to the Statistical Analysis of Imprecisely Valued Data -- Linear Regression Analysis for Interval-valued Data Based on Set Arithmetic: A Bootstrap Confidence Intervals for the Parameters of a Linear Regression Model with Fuzzy Random Variables -- On the Estimation of the Regression Model M for Interval Data -- Hybrid Least-Squares Regression Modelling Using Confidence -- Testing the Variability of Interval Data: An Application to Tidal Fluctuation.-Comparing the Medians of a Random Interval Defined by Means of Two Different L1 Metrics.-Comparing the Representativeness of the 1-norm Median for Likert and Free-response Fuzzy Scales.-Fuzzy Probability Distributions in Reliability Analysis, Fuzzy HPD-regions, and Fuzzy Predictive Distributions.

Soft computing, as an engineering science, and statistics, as a classical branch of mathematics, emphasize different aspects of data analysis. Soft computing focuses on obtaining working solutions quickly, accepting approximations and unconventional approaches. Its strength lies in its flexibility to create models that suit the needs arising in applications. In addition, it emphasizes the need for intuitive and interpretable models, which are tolerant to imprecision and uncertainty. Statistics is more rigorous and focuses on establishing objective conclusions based on experimental data by analyzing the possible situations and their (relative) likelihood. It emphasizes the need for mathematical methods and tools to assess solutions and guarantee performance. Combining the two fields enhances the robustness and generalizability of data analysis methods, while preserving the flexibility to solve real-world problems efficiently and intuitively.

There are no comments for this item.

Log in to your account to post a comment.

Languages: 
English |
العربية