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    <meta name="dc.creator" content="Alexis Arnaud"/>
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    <meta name="dc.creator" content="Aina Frau Pascual"/>
    <meta name="dc.creator" content="Alessandro Chiancone"/>
    <meta name="dc.creator" content="Stéphane Girard"/>
    <meta name="dc.creator" content="Marie-José Martinez"/>
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        <h2>Section: 
      Research Program</h2>
        <h3 class="titre3">Mixture models</h3>
        <p class="participants"><span class="part">Participants</span> :
	Alexis Arnaud, Jean-Baptiste Durand, Florence Forbes, Aina Frau Pascual, Alessandro Chiancone, Stéphane Girard, Marie-José Martinez.</p>
        <p><b>Key-words:</b>
mixture of distributions, EM algorithm, missing data, conditional independence,
statistical pattern recognition, clustering,
unsupervised and partially supervised learning.
</p>
        <p>In a first approach, we consider statistical parametric models,
<span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>θ</mi></math></span> being the parameter, possibly multi-dimensional, usually
unknown and to be estimated. We consider cases
where the data naturally divides into observed data
<span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mi>y</mi><mo>=</mo><msub><mi>y</mi><mn>1</mn></msub><mo>,</mo><mo>...</mo><mo>,</mo><msub><mi>y</mi><mi>n</mi></msub></mrow></math></span> and unobserved or missing data
<span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mrow><mi>z</mi><mo>=</mo><msub><mi>z</mi><mn>1</mn></msub><mo>,</mo><mo>...</mo><mo>,</mo><msub><mi>z</mi><mi>n</mi></msub></mrow></math></span>. The missing data <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>z</mi><mi>i</mi></msub></math></span> represents for instance the
memberships of one of a set of <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><mi>K</mi></math></span> alternative categories. The
distribution of an observed <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>y</mi><mi>i</mi></msub></math></span> can be written as a finite
mixture of distributions,</p>
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                        <mrow>
                          <mi>f</mi>
                          <mrow>
                            <mo>(</mo>
                            <msub>
                              <mi>y</mi>
                              <mi>i</mi>
                            </msub>
                            <mo>∣</mo>
                            <mi>θ</mi>
                            <mo>)</mo>
                          </mrow>
                          <mo>=</mo>
                          <munderover>
                            <mo>∑</mo>
                            <mrow>
                              <mi>k</mi>
                              <mo>=</mo>
                              <mn>1</mn>
                            </mrow>
                            <mi>K</mi>
                          </munderover>
                          <mi>P</mi>
                          <mrow>
                            <mo>(</mo>
                            <msub>
                              <mi>z</mi>
                              <mi>i</mi>
                            </msub>
                            <mo>=</mo>
                            <mi>k</mi>
                            <mo>∣</mo>
                            <mi>θ</mi>
                            <mo>)</mo>
                          </mrow>
                          <mi>f</mi>
                          <mrow>
                            <mo>(</mo>
                            <msub>
                              <mi>y</mi>
                              <mi>i</mi>
                            </msub>
                            <mo>∣</mo>
                            <msub>
                              <mi>z</mi>
                              <mi>i</mi>
                            </msub>
                            <mo>,</mo>
                            <mi>θ</mi>
                            <mo>)</mo>
                          </mrow>
                          <mspace width="0.277778em"/>
                          <mo>.</mo>
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              <td class="eqno" width="10" align="right">(1)</td>
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        <p>These models are interesting in that they may point out hidden
variable responsible for most of the observed variability and so
that the observed variables are <i>conditionally</i> independent.
Their estimation is often difficult due to the missing data. The
Expectation-Maximization (EM) algorithm is a general and now
standard approach to maximization of the likelihood in missing
data problems. It provides parameter estimation but also values
for missing data.</p>
        <p>Mixture models correspond to independent <span class="math"><math xmlns="http://www.w3.org/1998/Math/MathML"><msub><mi>z</mi><mi>i</mi></msub></math></span>'s. They have been increasingly used
in statistical pattern recognition. They enable a formal (model-based)
approach to (unsupervised) clustering.</p>
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