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        <h2>Section: 
      New Results</h2>
        <h3 class="titre3">Analysis of high dimensional data</h3>
        <p>
          <i>Participants: K. Duarte, S. Ferrigno, J.-M. Monnez, A. Muller-Gueudin, S. Tindel</i>
        </p>
        <a name="uid22"/>
        <h4 class="titre4">Online partial principal component analysis of
a data stream</h4>
        <p>Consider a data stream and suppose that each data vector is a realization of
a random vector whose expectation varies with time, the law of the centered
data vector being stationary. Consider the principal component analysis
(PCA) of this centered vector called partial PCA. In this study are defined
online estimations of the first principal axes by stochastic approximation
processes using a data batch at each step of the process or all the data
until the current step. This extends a former result obtained by J.-M. Monnez
by using one data vector at each step. This is applied to partial
generalized canonical correlation analysis by defining a stochastic
approximation process of the metric involved in this case using all the data
until the current step. If the expectation of the data vector varies
according to a linear model, a stochastic approximation process of the model
parameters is used. All these processes can be performed in parallel. A forthcoming preprint by R. Bar and J.-M. Monnez will discuss those aspects.</p>
        <a name="uid23"/>
        <h4 class="titre4">Data analysis for cumulative exposure Index</h4>
        <p>Everyone is subject to environmental exposures from various sources, with
negative health impacts (air, water and soil contamination, noise ...) or
with positive effects (e.g., green space). Studies considering such complex
environmental settings in a global manner are rare. In <a href="./bibliography.html#bigs-2014-bid37">[5]</a>  we propose to use
statistical factor and cluster analyses to create a composite exposure index
with a data-driven approach, in view to assess the environmental burden
experienced by populations. The study was carried out in the Great Lyon area
(France, 1.2M inhabitants) at the census block group (BG) scale. We used as
environmental indicators ambient air NO2 annual concentrations, noise
levels, proximity to green spaces, to industrial plants, to polluted sites
and to road traffic. Although it cannot be applied directly for risk or
health effect assessment, the resulting index can help to identify hot spots
of cumulative exposure, to prioritize urban policies or to compare the
environmental burden across study areas in an epidemiological framework.</p>
        <a name="uid24"/>
        <h4 class="titre4">A simultaneous stepwise covariate selection</h4>
        <p>In supervised learning the number of values of a response variable to
predict can be high. Also clustering them in a few clusters can be useful to
perform relevant supervised classification analysis. On the other hand
selecting relevant covariates is a crucial step to build robust and efficient
prediction models, especially when too many covariates are available in
regard to the overall sample size. As a first attempt to solve these
problems, we had already devised in a previous study an algorithm that
simultaneously clusters the levels of a categorical response variable in a
limited number of clusters and selects forward the best covariates by
alternate minimization of Wilks's Lambda. In the project carried out this year, we first extend the
former version of the algorithm to a more general framework where Wilks's
Lambda can be replaced by any model selection criterion. We also turned
forward selection into stepwise selection in order to remove covariates
in real time if necessary. Finally an application of our
algorithm to real datasets from peanut allergy studies allowed to get confirmation of some
previously published results and suggested new discoveries. The
possibilities of this algorithm are promising and it is hoped to be useful
for many practitioners.</p>
        <a name="uid25"/>
        <h4 class="titre4">Prognostic value of the Strauss estimated plasma</h4>
        <p>We describe here an application oriented study lead jointly by J.-M. Monnez and a medical team under the supervision of E. Albuisson at CHU Brabois.
The objective is to assess the prognostic value of estimations of volemia,
or of their variations, beyond clinical examination in a post-hoc analysis
of the Eplerenone Post-Acute Myocardial Infarction (AMI) Heart Failure (HF)
Efficacy and Survival Study (EPHESUS). Assessing congestion post-discharge
is indeed challenging but of paramount importance to optimize patient
management and prevent hospital readmissions. The analysis was performed in
a subset on 4957 patients with available data (within a full dataset of 6632
patients). Study endpoint was cardiovascular death and/or hospitalization
for HF between month 1 and month 3 after post-AMI HF. Estimated plasma
volume variations between baseline and month 1 were estimated by the Strauss
formula, which includes hemoglobin and hematocrit ratios. Other potential
predictors including congestion surrogates, hemodynamic and renal variables,
and medical history variables were tested. An instantaneous estimation of
plasma volume at month 1, ePVS M1, was defined and also tested. Multivariate
analysis was performed using stepwise logistic regression and linear
discriminant analysis. In HF complicating MI, congestion assessed by the
Strauss formula and an instantaneous derived measurement of plasma volume
displayed an added predictive value of early cardiovascular events, beyond
routine clinical assessment. Trials assessing congestion management guided
by this simple tool to monitor plasma volume are warranted.</p>
        <a name="uid26"/>
        <h4 class="titre4">Non parametric estimation of the conditional cumulative distribution function</h4>
        <p>This project fits into the global aim of improving local regression techniques. Indeed, we propose in <a href="./bibliography.html#bigs-2014-bid38">[21]</a>  to study the local linear estimator of the conditional distribution function. Namely, having an i.i.d. sample <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mrow><mo>(</mo><msub><mi>X</mi><mi>i</mi></msub><mo>,</mo><msub><mi>Y</mi><mi>i</mi></msub><mo>)</mo></mrow><mrow><mn>1</mn><mo>≤</mo><mi>i</mi><mo>≤</mo><mi>n</mi></mrow></msub></math></span>, we estimate the conditional distribution function <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mi>F</mi><mo>(</mo><mi>t</mi><mo>|</mo><mi>x</mi><mo>)</mo><mo>=</mo><mi>ℙ</mi><mo>(</mo><mi>Y</mi><mo>≤</mo><mi>t</mi><mo>|</mo><mi>X</mi><mo>=</mo><mi>x</mi><mo>)</mo></mrow></math></span> by:</p>
        <div align="center" class="mathdisplay">
          <a name="uid27"/>
          <table width="100%">
            <tr valign="middle">
              <td align="center">
                <math xmlns="http://www.w3.org/1998/Math/MathML">
                  <mrow>
                    <msubsup>
                      <mover accent="true">
                        <mi>F</mi>
                        <mo>^</mo>
                      </mover>
                      <mi>n</mi>
                      <mrow>
                        <mo>(</mo>
                        <mn>1</mn>
                        <mo>)</mo>
                      </mrow>
                    </msubsup>
                    <mrow>
                      <mo>(</mo>
                      <mi>t</mi>
                      <mo>,</mo>
                      <msub>
                        <mi>h</mi>
                        <mi>n</mi>
                      </msub>
                      <mo>|</mo>
                      <mi>x</mi>
                      <mo>)</mo>
                    </mrow>
                    <mo>=</mo>
                    <mfrac>
                      <mrow>
                        <msub>
                          <mover accent="true">
                            <mi>f</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>2</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mrow>
                            <mi>x</mi>
                            <mo>,</mo>
                            <msub>
                              <mi>h</mi>
                              <mi>n</mi>
                            </msub>
                          </mrow>
                          <mo>)</mo>
                        </mrow>
                        <msub>
                          <mover accent="true">
                            <mi>r</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>0</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mi>x</mi>
                          <mo>,</mo>
                          <mi>t</mi>
                          <mo>,</mo>
                          <msub>
                            <mi>h</mi>
                            <mi>n</mi>
                          </msub>
                          <mo>)</mo>
                        </mrow>
                        <mo>-</mo>
                        <msub>
                          <mover accent="true">
                            <mi>f</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>1</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mrow>
                            <mi>x</mi>
                            <mo>,</mo>
                            <msub>
                              <mi>h</mi>
                              <mi>n</mi>
                            </msub>
                          </mrow>
                          <mo>)</mo>
                        </mrow>
                        <msub>
                          <mover accent="true">
                            <mi>r</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>1</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mi>x</mi>
                          <mo>,</mo>
                          <mi>t</mi>
                          <mo>,</mo>
                          <msub>
                            <mi>h</mi>
                            <mi>n</mi>
                          </msub>
                          <mo>)</mo>
                        </mrow>
                      </mrow>
                      <mrow>
                        <msub>
                          <mover accent="true">
                            <mi>f</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>0</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mrow>
                            <mi>x</mi>
                            <mo>,</mo>
                            <msub>
                              <mi>h</mi>
                              <mi>n</mi>
                            </msub>
                          </mrow>
                          <mo>)</mo>
                        </mrow>
                        <msub>
                          <mover accent="true">
                            <mi>f</mi>
                            <mo>^</mo>
                          </mover>
                          <mrow>
                            <mi>n</mi>
                            <mo>,</mo>
                            <mn>2</mn>
                          </mrow>
                        </msub>
                        <mrow>
                          <mo>(</mo>
                          <mrow>
                            <mi>x</mi>
                            <mo>,</mo>
                            <msub>
                              <mi>h</mi>
                              <mi>n</mi>
                            </msub>
                          </mrow>
                          <mo>)</mo>
                        </mrow>
                        <mo>-</mo>
                        <msup>
                          <mfenced separators="" open="(" close=")">
                            <msub>
                              <mover accent="true">
                                <mi>f</mi>
                                <mo>^</mo>
                              </mover>
                              <mrow>
                                <mi>n</mi>
                                <mo>,</mo>
                                <mn>1</mn>
                              </mrow>
                            </msub>
                            <mrow>
                              <mo>(</mo>
                              <mrow>
                                <mi>x</mi>
                                <mo>,</mo>
                                <msub>
                                  <mi>h</mi>
                                  <mi>n</mi>
                                </msub>
                              </mrow>
                              <mo>)</mo>
                            </mrow>
                          </mfenced>
                          <mn>2</mn>
                        </msup>
                      </mrow>
                    </mfrac>
                  </mrow>
                </math>
              </td>
              <td class="eqno" width="10" align="right">(1)</td>
            </tr>
          </table>
        </div>
        <p class="notaparagraph">where <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msup><mrow/><mrow><mo>(</mo><mn>1</mn><mo>)</mo></mrow></msup></math></span> denotes the order 1 of the local polynomial estimator, <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mover accent="true"><mi>f</mi><mo>^</mo></mover><mrow><mi>n</mi><mo>,</mo><mi>j</mi></mrow></msub></math></span> stands for a kernel estimator with order <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>j</mi></math></span> of the probability density function <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>f</mi><mi>X</mi></msub></math></span> of <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>X</mi></math></span>, <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mover accent="true"><mi>r</mi><mo>^</mo></mover><mrow><mi>n</mi><mo>,</mo><mi>j</mi></mrow></msub></math></span> estimates the distribution of the couple <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mo>(</mo><mi>X</mi><mo>,</mo><mi>Y</mi><mo>)</mo></mrow></math></span> and <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>h</mi><mi>n</mi></msub></math></span> is a bandwidth parameter.</p>
        <p>This estimator is a particular case of the local polynomial estimators. It is the local polynomial estimator of order <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mi>p</mi><mo>=</mo><mn>1</mn></mrow></math></span>. Another simpler estimator, with order <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mi>p</mi><mo>=</mo><mn>0</mn></mrow></math></span>, is well known as the Nadaraya-Watson estimator.</p>
        <p>We are interested in showing the advantage of this estimator over the Nadaraya-Watson estimator. We show asymptotic results for our estimator (exact rate of uniform consistency), and establish also uniform asymptotic certainty bands for the conditional cumulative distribution function.</p>
        <p>We obtain the following result under some assumptions on the cumulative distribution <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>F</mi></math></span>, <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>f</mi><mi>X</mi></msub></math></span>, the kernel <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>K</mi></math></span> and the bandwidth <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>h</mi><mi>n</mi></msub></math></span>,</p>
        <div align="center" class="mathdisplay">
          <a name="uid28"/>
          <table width="100%">
            <tr valign="middle">
              <td align="center">
                <math xmlns="http://www.w3.org/1998/Math/MathML">
                  <mrow>
                    <munder>
                      <mo movablelimits="true" form="prefix">sup</mo>
                      <mrow>
                        <mi>t</mi>
                        <mo>∈</mo>
                        <mi>ℝ</mi>
                      </mrow>
                    </munder>
                    <munder>
                      <mo movablelimits="true" form="prefix">sup</mo>
                      <mrow>
                        <mi>x</mi>
                        <mo>∈</mo>
                        <mi>I</mi>
                      </mrow>
                    </munder>
                    <msqrt>
                      <mfrac>
                        <mrow>
                          <mi>n</mi>
                          <msub>
                            <mi>h</mi>
                            <mi>n</mi>
                          </msub>
                        </mrow>
                        <mrow>
                          <mo form="prefix">log</mo>
                          <mo>(</mo>
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                            <mi>h</mi>
                            <mi>n</mi>
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                              <mo>-</mo>
                              <mn>1</mn>
                            </mrow>
                          </msubsup>
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                        </mrow>
                      </mfrac>
                    </msqrt>
                    <mfenced separators="" open="|" close="|">
                      <msubsup>
                        <mover accent="true">
                          <mi>F</mi>
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                        </mover>
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                        <mrow>
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                          <mo>)</mo>
                        </mrow>
                      </msubsup>
                      <mrow>
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                        <msub>
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                          <mi>n</mi>
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                      </mrow>
                      <mo>-</mo>
                      <mover accent="true">
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                        <mo>^</mo>
                      </mover>
                      <mfenced separators="" open="(" close=")">
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                            <mi>F</mi>
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                          </mover>
                          <mi>n</mi>
                          <mrow>
                            <mo>(</mo>
                            <mn>1</mn>
                            <mo>)</mo>
                          </mrow>
                        </msubsup>
                        <mrow>
                          <mo>(</mo>
                          <mi>t</mi>
                          <mo>,</mo>
                          <msub>
                            <mi>h</mi>
                            <mi>n</mi>
                          </msub>
                          <mo>|</mo>
                          <mi>x</mi>
                          <mo>)</mo>
                        </mrow>
                      </mfenced>
                    </mfenced>
                    <munderover>
                      <mo>→</mo>
                      <mrow>
                        <mi>n</mi>
                        <mo>→</mo>
                        <mo>+</mo>
                        <mi>∞</mi>
                      </mrow>
                      <mi>ℙ</mi>
                    </munderover>
                    <msub>
                      <mi>σ</mi>
                      <mi>F</mi>
                    </msub>
                    <mrow>
                      <mo>(</mo>
                      <mi>I</mi>
                      <mo>)</mo>
                    </mrow>
                  </mrow>
                </math>
              </td>
              <td class="eqno" width="10" align="right">(2)</td>
            </tr>
          </table>
        </div>
        <p class="notaparagraph">where</p>
        <div align="center" class="mathdisplay">
          <math xmlns="http://www.w3.org/1998/Math/MathML">
            <mrow>
              <msubsup>
                <mi>σ</mi>
                <mi>F</mi>
                <mn>2</mn>
              </msubsup>
              <mrow>
                <mo>(</mo>
                <mi>I</mi>
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              </mrow>
              <mo>=</mo>
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                <msubsup>
                  <mrow>
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                    <mo>|</mo>
                    <mi>K</mi>
                    <mo>|</mo>
                    <mo>|</mo>
                  </mrow>
                  <mn>2</mn>
                  <mn>2</mn>
                </msubsup>
                <mstyle scriptlevel="0" displaystyle="true">
                  <mrow>
                    <mn>2</mn>
                    <munder>
                      <mo movablelimits="true" form="prefix">inf</mo>
                      <mrow>
                        <mi>x</mi>
                        <mo>∈</mo>
                        <mi>I</mi>
                      </mrow>
                    </munder>
                    <msub>
                      <mi>f</mi>
                      <mi>X</mi>
                    </msub>
                    <mrow>
                      <mo>(</mo>
                      <mi>x</mi>
                      <mo>)</mo>
                    </mrow>
                  </mrow>
                </mstyle>
              </mfrac>
              <mo>·</mo>
            </mrow>
          </math>
        </div>
        <p>As corollaries of this result, we extend our results to other statistical functions, such as the quantiles and the regression function.</p>
        <p>We illustrate our results with simulations and an application on foetopathologic data.</p>
        <div align="center" style="margin-top:10px">
          <a name="uid29">
            <!--...-->
          </a>
          <table title="" class="objectContainer">
            <caption align="bottom"><strong>Figure
	5. </strong>Fetal weight during the pregnancy: estimation of mean and quantiles from our local polynomial regression method.</caption>
            <tr align="center">
              <td>
                <table>
                  <tr>
                    <td xmlns="" style="height:3px;" align="center">
                      <img xmlns="http://www.w3.org/1999/xhtml" style="width:204.95818pt" alt="IMG/AppliMaternite.png" src="IMG/AppliMaternite.png"/>
                    </td>
                  </tr>
                </table>
              </td>
            </tr>
          </table>
        </div>
        <p>We have also started a study about the regression function in the application on foetopathologic data. We consider the nonparametric model</p>
        <div align="center" class="mathdisplay">
          <math xmlns="http://www.w3.org/1998/Math/MathML">
            <mrow>
              <mi>Y</mi>
              <mo>=</mo>
              <mi>m</mi>
              <mo>(</mo>
              <mi>X</mi>
              <mo>)</mo>
              <mo>+</mo>
              <mi>ϵ</mi>
              <mo>,</mo>
            </mrow>
          </math>
        </div>
        <p class="notaparagraph">where <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>Y</mi></math></span> is the fetal weight , <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>X</mi></math></span> are the gestational weeks, <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>m</mi></math></span> is a smooth unknown function and <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>ϵ</mi></math></span> the error. The goal is to provide a test to detect significant features (or change points) of this regression curve. The regression curve is estimated using local polynomial kernel smoothers.</p>
      </div>
      <!--FIN du corps du module-->
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