scispace - formally typeset
Search or ask a question

Answers from top 8 papers

More filters
Papers (8)Insight
Furthermore, giving a formal study of fuzzy partitions and some useful aspects of fuzzy associations and fuzzy systems, the paper can be used as a theoretical background for designing consistent fuzzy inference systems.
Experimental results prove that the fuzzy inference system is efficient.
Book ChapterDOI
01 Jan 2007
34 Citations
The latter implies both flexibility and effectiveness in fuzzy inference applications.
Therefore, it is an alternative technique to fuzzy inference systems.
To the authors’ knowledge, this is the first use of a fuzzy inference system in the domain of value of information.
This methodology is interesting, not only for the results presented and obtained through computer simulations, but also for its generality concerning to the kind of fuzzy inference system used.
The results obtained show the effectiveness of the proposed method to design structures of fuzzy inference systems.
The proposed model is able to handle very general kinds of facts and rules, and it also verifies the most usual properties required by a fuzzy inference model.

Related Questions

How can fuzzy logic be used to solve real-world problems?5 answersFuzzy logic can be used to solve real-world problems by modeling uncertainties and improving the quality of solutions. It can be applied in various fields such as control, classification, clustering, and prediction. Fuzzy variables provide a better description of real-life problems, which often contain a high degree of uncertainty. Fuzzy logic can be used to model uncertainties in combinatorial optimization problems, such as the Location Set Covering Problem, Maximal Covering Location Problem, and Minimal Covering Location Problem. Fuzzy clustering algorithms based on graph theory and fuzzy logic methodology can be used to structure data and form clusters based on pairwise distance of objects from each other. Fuzzy rule-based systems are another application of fuzzy logic, where the design of interpretable models is emphasized. Overall, fuzzy logic provides a flexible and effective approach to solving real-world problems.
What are the advantages and disadvantages of using fuzzy logic for this purpose?5 answersFuzzy logic has several advantages for various applications, including control systems, classification, clustering, and prediction. It can handle information that is uncertain, imprecise, and vague, making it suitable for dealing with real-life problems that contain a high degree of uncertainty. Fuzzy logic allows for the use of linguistic grades, which is useful in uncertainty management of linguistic evaluations. It also provides a way to approximate human decision-making in complex situations by considering factors such as situational context, emotions, and values. However, classical fuzzy logic has some disadvantages, such as the difficulty in forming, grounding, and using complex formulae for logical reasoning. Additionally, assigning optimal values for control parameters and designing optimal fuzzy rule tables can be challenging.
What are the applications of machine learning?5 answersMachine learning has a broad range of applications across various industries, including healthcare, computer vision, bioinformatics, intrusion detection, marketing, and image deconvolution. In healthcare, machine learning is used to improve diagnosis and treatment processes. In the field of computer vision, machine learning algorithms can be applied to reduce the computational complexity of computer vision applications on embedded devices. Machine learning also plays a role in the assessment and treatment of chronic myeloid leukemia (CML), with studies showing potential for the clinical implementation of machine learning models in the diagnosis, risk assessment, and treatment processes of patients with CML. Additionally, machine learning can be used to detect counterfeit banknotes by analyzing specific security features through image processing.
How can fuzzy logic be used in software development?5 answersFuzzy logic can be used in software development to estimate software reliability. It can assign target dependability to different parts of the software system. Fuzzy logic models can be used to assess the quality of software based on parameters such as reliability, efficiency, usability, maintainability, and portability. Fuzzy logic-based models can also be used for software cost estimation, providing uncertain values that may be more accurate than other models. Additionally, fuzzy logic techniques can be employed to assess the number of defects in software before the testing phase, improving software quality and reducing unexpected costs.
How does fuzzy neural inference work?9 answers
How fuzzy inference system works?9 answers