<div dir="ltr"><br><div class="gmail_quote">---------- Forwarded message ----------<br>From: <b class="gmail_sendername">Márcia Branco</b> <span dir="ltr"><<a href="mailto:mbranco@ime.usp.br">mbranco@ime.usp.br</a>></span><br>Date: Mon, Aug 7, 2017 at 10:53 AM<br>Subject: Re: Seminários - Temático FAPESP<br>To: <a href="mailto:professores@ime.usp.br">professores@ime.usp.br</a>, <a href="mailto:g-posmae@ime.usp.br">g-posmae@ime.usp.br</a>, <a href="mailto:g-posmat@ime.usp.br">g-posmat@ime.usp.br</a>, <a href="mailto:g-posmac@ime.usp.br">g-posmac@ime.usp.br</a>, <a href="mailto:g-posmap@ime.usp.br">g-posmap@ime.usp.br</a><br><br><br><div dir="ltr">Lembrando, amanhã(terça) a partir das 14h, palestras do professor Marc Genton (<a href="https://www.kaust.edu.sa/en/study/faculty/marc-genton" target="_blank">https://www.kaust.edu.sa/en/<wbr>study/faculty/marc-genton</a>) <div>e professora Ying Sun ( <a href="https://www.kaust.edu.sa/en/study/faculty/ying-sun" target="_blank">https://www.kaust.edu.sa/en/<wbr>study/faculty/ying-sun</a>) . </div><span class="HOEnZb"><font color="#888888"><div><br></div><div>Márcia. </div></font></span></div><div class="HOEnZb"><div class="h5"><div class="gmail_extra"><br><div class="gmail_quote">On Wed, Aug 2, 2017 at 9:13 AM, Márcia Branco <span dir="ltr"><<a href="mailto:mbranco@ime.usp.br" target="_blank">mbranco@ime.usp.br</a>></span> wrote:<br><blockquote class="gmail_quote" style="margin:0 0 0 .8ex;border-left:1px #ccc solid;padding-left:1ex"><div dir="ltr"><div>Caros</div><div><br></div><div>Convido a todos para as primeiras apresentações do ciclo de seminários do grupo ModReg-Fapesp do segundo semestre de 2017 no IME-USP, conforme indicado abaixo. </div><div><br></div><div>Saudações</div><div><br></div><div>Márcia. </div><div>------------------------------<wbr>------------------------------<wbr>------------------------------<wbr>-----------</div>
        
        
        


<p class="m_5633442768042795732m_-8323136555883367232gmail-western" align="justify" style="margin-bottom:0cm;line-height:100%">
<strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Seminário
- Projeto Temático: Modelos de Regressão e
Aplicações</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Título</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial"> </span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Directional
Outlyingness for Multivariate Functional Data</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Palestrante:
</span></font></font></font></strong><strong><font color="#000000"><font face="arial, sans-serif"><font style="font-size:10pt"><span style="font-weight:normal"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Marc
G. Genton, King Abdullah University of Science and Technology
(KAUST), Saudi Arabia</span></span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Quando</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:
8 de agosto de 2017, terça-feira, às 14h.</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Onde</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial"> Auditório
Antônio Gilioli - </span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt">Sala
262</font></font></font><font color="#222222"><font face="Arial, sans-serif"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">
</span></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt">–
Bloco A, segundo andar - IME-USP</font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Resumo</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">.
</span></font></font></font>
</p>
<div><span style="font-size:10pt;color:rgb(0,0,0)">The
direction of outlyingness is crucial to describing the centrality of
multivariate functional data. Motivated by this idea, we generalize
classical depth to directional outlyingness for functional data. We
investigate theoretical properties of functional directional
outlyingness and find that it naturally decomposes functional
outlyingness into two parts: magnitude outlyingness and shape
outlyingness which represent the centrality of a curve for magnitude
and shape, respectively. Using this decomposition, we provide a
visualization tool for the centrality of curves. Furthermore, we
design an outlier detection procedure based on functional directional
outlyingness. This criterion applies to both univariate and
multivariate curves and simulation studies show that it outperforms
competing methods. Weather and electrocardiogram data demonstrate the
practical application of our proposed framework. We further discuss
an outlyingness matrix for multivariate functional data
classification as well as plots for multivariate functional data
visualization and outlier detection. The talk is based on joint work
with Wenlin Dai.</span> </div><div><br></div><div>
        
        
        


<p class="m_5633442768042795732m_-8323136555883367232gmail-western" align="justify" style="margin-bottom:0cm;line-height:100%">
<strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Título</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial"> </span></font></font></font><font color="#000000"><font face="arial, sans-serif"><font style="font-size:10pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Visualization
and Assessment of Spatio-temporal Covariance Properties</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Palestrante:
</span></font></font></font></strong><strong><font color="#000000"><font face="arial, sans-serif"><font style="font-size:10pt"><span style="font-weight:normal"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Ying
Sun, King Abdullah University of Science and Technology (KAUST),
Saudi Arabia</span></span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Quando</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:
8 de agosto de 2017, terça-feira, às 14h45min.</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Onde</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">:</span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial"> Auditório
Antônio Gilioli - </span></font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt">Sala
262</font></font></font><font color="#222222"><font face="Arial, sans-serif"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">
</span></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt">–
Bloco A, segundo andar - IME-USP</font></font></font><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><br>
<br>
</font></font></font><strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">Resumo</span></font></font></font></strong><font color="#222222"><font face="Arial, sans-serif"><font style="font-size:9pt"><span style="background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial">.
</span></font></font></font>
</p>
<p class="m_5633442768042795732m_-8323136555883367232gmail-western" style="margin-bottom:0cm;line-height:100%">
<font face="arial, sans-serif"><font style="font-size:10pt">Spatio-temporal
covariances are important for describing the spatio-temporal
variability of underlying random processes in geostatistical data.
For second-order stationary processes, there exist subclasses of
covariance functions that assume a simpler spatio-temporal dependence
structure with separability and full symmetry. However, it is
challenging to visualize and assess separability and full symmetry
from spatio-temporal observations. In this work, we propose a
functional data analysis approach that constructs test functions
using the cross-covariances from time series observed at each pair of
spatial locations. These test functions of temporal lags summarize
the properties of separability or symmetry for the given spatial
pairs. We use functional boxplots  to visualize the functional
median and the variability of the test functions, where the extent of
departure from zero at all temporal lags indicates the degree of
non-separability or asymmetry. We also develop a rank-based
nonparametric testing procedure for assessing the significance of the
non-separability or asymmetry. The performances of the proposed
methods are examined by simulations with various commonly used
spatio-temporal covariance models. To illustrate our methods in
practical applications, we apply it to real datasets, including
weather station data and climate model outputs.</font></font></p>
<p lang="en-US" align="justify" style="margin-bottom:0cm;background-image:initial;background-position:initial;background-size:initial;background-repeat:initial;background-origin:initial;background-clip:initial;line-height:100%">
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</blockquote></div><br></div>
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