jagomart
digital resources
picture1_Thermal Analysis Pdf 88632 | Multidimensionalscaling


 173x       Filetype PDF       File size 0.45 MB       Source: halweb.uc3m.es


File: Thermal Analysis Pdf 88632 | Multidimensionalscaling
multivariate statistics chapter 5 multidimensional scaling pedro galeano departamento de estad stica universidad carlos iii de madrid pedro galeano uc3m es course 2017 2018 master in mathematical engineering pedro galeano ...

icon picture PDF Filetype PDF | Posted on 15 Sep 2022 | 3 years ago
Partial capture of text on file.
                                               Multivariate Statistics
                                           Chapter 5: Multidimensional scaling
                                                             Pedro Galeano
                                                   Departamento de Estad´ıstica
                                                Universidad Carlos III de Madrid
                                                     pedro.galeano@uc3m.es
                                                              Course 2017/2018
                                           Master in Mathematical Engineering
         Pedro Galeano (Course 2017/2018)                 Multivariate Statistics - Chapter 5        Master in Mathematical Engineering   1 / 37
     1   Introduction
     2   Statistical distances
     3   Metric MDS
     4   Non-metric MDS
         Pedro Galeano (Course 2017/2018)                 Multivariate Statistics - Chapter 5        Master in Mathematical Engineering   2 / 37
    Introduction
        As we have seen in previous chapters, principal components and factor analysis
        are important dimension reduction tools.
        However, in many applied sciences, data is recorded as ranked information.
        For example, in marketing, one may record “product A is better than product
        B”.
        Multivariate observations therefore often have mixed data characteristics and
        contain information that would enable us to employ one of the multivariate
        techniques presented so far.
        Multidimensional scaling (MDS) is a method based on proximities between ob-
        jects, subjects, or stimuli used to produce a spatial representation of these items.
        MDSisadimensionreductiontechniquesincetheaimistofindasetofpointsin
        low dimension (typically two dimensions) that reflect the relative configuration
        of the high-dimensional data objects.
         Pedro Galeano (Course 2017/2018)                 Multivariate Statistics - Chapter 5        Master in Mathematical Engineering   3 / 37
    Introduction
        The proximities between objects are defined as any set of numbers that express
        the amount of similarity or dissimilarity between pairs of objects.
        In contrast to the techniques considered so far, MDS does not start from a n×p
        dimensional data matrix, but from a n ×n dimensional dissimilarity or distance
        matrix, D, with elements δ ′ or d ′, respectively, for i,i′ = 1,...,n.
                                                     ii         ii
        Hence, the underlying dimensionality of the data under investigation is in general
        unknown.
         Pedro Galeano (Course 2017/2018)                 Multivariate Statistics - Chapter 5        Master in Mathematical Engineering   4 / 37
The words contained in this file might help you see if this file matches what you are looking for:

...Multivariate statistics chapter multidimensional scaling pedro galeano departamento de estad stica universidad carlos iii madrid ucm es course master in mathematical engineering introduction statistical distances metric mds non as we have seen previous chapters principal components and factor analysis are important dimension reduction tools however many applied sciences data is recorded ranked information for example marketing one may record product a better than b observations therefore often mixed characteristics contain that would enable us to employ of the techniques presented so far method based on proximities between ob jects subjects or stimuli used produce spatial representation these items mdsisadimensionreductiontechniquesincetheaimistondasetofpointsin low typically two dimensions reect relative conguration high dimensional objects dened any set numbers express amount similarity dissimilarity pairs contrast considered does not start from n p matrix but distance d with element...

no reviews yet
Please Login to review.