2022
DOI: 10.1007/s11634-022-00520-8
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New models for symbolic data analysis

Abstract: Symbolic data analysis (SDA) is an emerging area of statistics concerned with understanding and modelling data that takes distributional form (i.e. symbols), such as random lists, intervals and histograms. It was developed under the premise that the statistical unit of interest is the symbol, and that inference is required at this level. Here we consider a different perspective, which opens a new research direction in the field of SDA. We assume that, as with a standard statistical analysis, inference is requi… Show more

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Cited by 10 publications
(4 citation statements)
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“…, respectively. In the two expressions, X max j and X min j , respectively, denote the marginal maximum and minimum value of the X j (Hüsler and Reiss 1989;Beranger et al 2023). Generally, the first grid point is expressed as 1 j = p min j , and the last one is described as M j .…”
Section: Theorymentioning
confidence: 99%
See 1 more Smart Citation
“…, respectively. In the two expressions, X max j and X min j , respectively, denote the marginal maximum and minimum value of the X j (Hüsler and Reiss 1989;Beranger et al 2023). Generally, the first grid point is expressed as 1 j = p min j , and the last one is described as M j .…”
Section: Theorymentioning
confidence: 99%
“…Marginal maxima and minima values are constants for a given sample data (Hüsler and Reiss 1989;Beranger et al 2023). Thus, the estimation grid size is inversely proportional to the bandwidth.…”
Section: Field Datamentioning
confidence: 99%
“…Feedbacks, advice and knowledge from experts have to be incorporated into the model since the model can only identify the types of diseases that have been learned in the learning phase, there may be a special case that doctors face in real life. Few symbolic object-based techniques can be used for solving optimization, data balancing, and dimension reduction problems [29]. Instead of using PCA, symbolic factor analysis can be used.…”
Section: Future Directionmentioning
confidence: 99%
“…Symbolic data analysis [18] encompasses methods that study the statistical properties of data aggregated by criteria that meet some scientific question. Such methods have attracted lots of attention because they present competitive results in many data analysis applications [17,19,20].…”
Section: Conflicts Of Interestmentioning
confidence: 99%