Linguistic Fuzzy Rules in Data Mining: Follow-Up Mamdani Fuzzy Modeling Principle

Author(s):  
A. Fernández ◽  
F. Herrera
2009 ◽  
Vol 16-19 ◽  
pp. 826-830
Author(s):  
Yong Fu Wang ◽  
Hua Long Cao ◽  
Yi Min Zhang ◽  
Bang Chun Wen

Modeling of friction force has been a challenging task in mechanical engineering. Traditional way, such as mathematical modeling approaches, was found quite difficult to achieve satisfactory performances due to some immanent nonlinearity and uncertainties in systems. This paper aims to develop fuzzy modeling techniques to characterize the friction dynamics. The proposed fuzzy modeling approach has two folds, that is, extraction of fuzzy rules using data mining techniques; setup of static model based on the fuzzy rules. The results obtained demonstrate that our proposed method in this paper has good potential in many mechanical systems with unknown nonlinear friction.


2010 ◽  
Vol 36 (3) ◽  
pp. 412-420 ◽  
Author(s):  
Yong-Fu WANG ◽  
Dian-Hui WANG ◽  
Tian-You CHAI

Nutrients ◽  
2021 ◽  
Vol 13 (2) ◽  
pp. 357
Author(s):  
Alfonso Rodríguez-Herrera ◽  
Joaquín Reyes-Andrade ◽  
Cristina Rubio-Escudero

The assessment of compliance of gluten-free diet (GFD) is a keystone in the supervision of celiac disease (CD) patients. Few data are available documenting evidence-based follow-up frequency for CD patients. In this work we aim at creating a criterion for timing of clinical follow-up for CD patients using data mining. We have applied data mining to a dataset with 188 CD patients on GFD (75% of them are children below 14 years old), evaluating the presence of gluten immunogenic peptides (GIP) in stools as an adherence to diet marker. The variables considered are gender, age, years following GFD and adherence to the GFD by fecal GIP. The results identify patients on GFD for more than two years (41.5% of the patients) as more prone to poor compliance and so needing more frequent follow-up than patients with less than 2 years on GFD. This is against the usual clinical practice of following less patients on long term GFD, as they are supposed to perform better. Our results support different timing follow-up frequency taking into consideration the number of years on GFD, age and gender. Patients on long term GFD should have a more frequent monitoring as they show a higher level of gluten exposure. A gender perspective should also be considered as non-compliance is partially linked to gender in our results: Males tend to get more gluten exposure, at least in the cultural context where our study was carried out. Children tend to perform better than teenagers or adults.


2020 ◽  
Author(s):  
Vahid Farrahi ◽  
Maisa Niemelä ◽  
Mikko Kärmeniemi ◽  
Soile Puhakka ◽  
Maarit Kangas ◽  
...  

Abstract Purpose: A data mining approach was applied to establish a multilevel hierarchy predicting physical activity (PA) behavior, and to methodologically identify the correlates of PA behavior. Methods: Cross-sectional data from the population-based Northern Finland Birth Cohort 1966 study, collected in the most recent follow-up at age 46, were used to create a hierarchy using the chi-square automatic interaction detection (CHAID) decision tree technique for predicting PA behavior. PA behavior is defined as active or inactive depending on participants’ activity profiles, which were previously created through a multidimensional (clustering) approach on continuous accelerometer-measured activity intensities in one week. The input variables (predictors) used for decision tree fitting consisted of individual, demographical, psychological, behavioral, environmental, and physical factors. Using generalized linear mixed models, we also analyzed how factors emerging from the model were associated with three PA metrics, including daily time (minutes per day) in sedentary (SED), light PA (LPA), and moderate-to-vigorous PA (MVPA), to assure the relative importance of methodologically identified factors. Results: Of the 4,582 participants with valid accelerometer data at the latest follow-up, 2,701 and 1,881 had active and inactive profiles, respectively. We used a total of 168 factors as input variables to classify these two PA behaviors. Out of these 168 factors, the decision tree selected 36 factors of different domains from which 54 subgroups of participants were formed. The emerging factors from the model explained minutes per day in SED, LPA, and/or MVPA, including body fat percentage (SED: B=26.5, LPA: B=-16.1, and MVPA: B=-11.7), normalized heart rate recovery 60 seconds after exercise (SED: B=-16.1, LPA: B=9.9, and MVPA: B=9.6), average weekday total sitting time (SED: B=34.1, LPA: B=-25.3, and MVPA: B=-5.8), and extravagance score (SED: B=6.3 and LPA: B=-3.7). Conclusions: Using data mining, we established a data-driven model composed of 36 different factors of relative importance from empirical data. This model may be used to identify subgroups for multilevel intervention allocation and design. Additionally, this study methodologically discovered an extensive set of factors that can be a basis for additional hypothesis testing in PA correlates research.


2008 ◽  
Vol 21 (4) ◽  
pp. 639-647
Author(s):  
Il-Su Park ◽  
Wang-Sik Yong ◽  
Yu-Mi Kim ◽  
Sung-Hong Kang ◽  
Jun-Tae Han

2010 ◽  
Vol 36 (2) ◽  
pp. 463-473 ◽  
Author(s):  
Raja Noor Ainon ◽  
Awang M. Bulgiba ◽  
Adel Lahsasna

2019 ◽  
Vol 10 (1) ◽  
pp. 80-93 ◽  
Author(s):  
Richard Ooms ◽  
Marco R. Spruit ◽  
Sietse Overbeek

This article revisits the Three Phases Method (3PM) which was published in 2010 in this journal. The 3PM is aimed at outsourcing data mining to improve corporate performance. This follow-up work aims to provide more insight into the 3PM by describing every phase of the method in detail as Meta-Algorithmic Models, through descriptions of the activities and concepts of the method and visualising the process and deliverables in Process Deliverable Diagram notation to simplify adoption of the method by practitioners.


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