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<div id="class.svm" class="reference">

 <h1 class="title">A classe SVM</h1>
 

 <div class="partintro"><p class="verinfo">(PECL svm &gt;= 0.1.0)</p>


  <div class="section" id="svm.intro">
   <h2 class="title">Introdução</h2>
   <p class="simpara">

   </p>
  </div>


  <div class="section" id="svm.synopsis">
   <h2 class="title">Resumo da classe</h2>


   <div class="classsynopsis">
    <span class="ooclass"><strong class="classname"></strong></span>


    <div class="classsynopsisinfo">
     <span class="ooclass">
      <span class="modifier">class</span> <strong class="classname">SVM</strong>
     </span>
     {</div>

    <div class="classsynopsisinfo classsynopsisinfo_comment">/* Constantes */</div>
    <div class="fieldsynopsis">
     <span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.c-svc"><var class="varname">C_SVC</var></a></var><span class="initializer"> = 0</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.nu-svc"><var class="varname">NU_SVC</var></a></var><span class="initializer"> = 1</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.one-class"><var class="varname">ONE_CLASS</var></a></var><span class="initializer"> = 2</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.epsilon-svr"><var class="varname">EPSILON_SVR</var></a></var><span class="initializer"> = 3</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.nu-svr"><var class="varname">NU_SVR</var></a></var><span class="initializer"> = 4</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.kernel-linear"><var class="varname">KERNEL_LINEAR</var></a></var><span class="initializer"> = 0</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.kernel-poly"><var class="varname">KERNEL_POLY</var></a></var><span class="initializer"> = 1</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.kernel-rbf"><var class="varname">KERNEL_RBF</var></a></var><span class="initializer"> = 2</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.kernel-sigmoid"><var class="varname">KERNEL_SIGMOID</var></a></var><span class="initializer"> = 3</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.kernel-precomputed"><var class="varname">KERNEL_PRECOMPUTED</var></a></var><span class="initializer"> = 4</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-type"><var class="varname">OPT_TYPE</var></a></var><span class="initializer"> = 101</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-kernel-type"><var class="varname">OPT_KERNEL_TYPE</var></a></var><span class="initializer"> = 102</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-degree"><var class="varname">OPT_DEGREE</var></a></var><span class="initializer"> = 103</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-shrinking"><var class="varname">OPT_SHRINKING</var></a></var><span class="initializer"> = 104</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-probability"><var class="varname">OPT_PROPABILITY</var></a></var><span class="initializer"> = 105</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-gamma"><var class="varname">OPT_GAMMA</var></a></var><span class="initializer"> = 201</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-nu"><var class="varname">OPT_NU</var></a></var><span class="initializer"> = 202</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-eps"><var class="varname">OPT_EPS</var></a></var><span class="initializer"> = 203</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-p"><var class="varname">OPT_P</var></a></var><span class="initializer"> = 204</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-coef-zero"><var class="varname">OPT_COEF_ZERO</var></a></var><span class="initializer"> = 205</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-c"><var class="varname">OPT_C</var></a></var><span class="initializer"> = 206</span>;</div>

    <div class="fieldsynopsis"><span class="modifier">const</span>
     <span class="type"><a href="language.types.integer.php" class="type int">int</a></span>
      <var class="fieldsynopsis_varname"><a href="class.svm.php#svm.constants.opt-cache-size"><var class="varname">OPT_CACHE_SIZE</var></a></var><span class="initializer"> = 207</span>;</div>


    <div class="classsynopsisinfo classsynopsisinfo_comment">/* Métodos */</div>
    <div class="constructorsynopsis dc-description">
   <span class="modifier">public</span> <span class="methodname"><a href="svm.construct.php" class="methodname">__construct</a></span>()</div>

    <div class="methodsynopsis dc-description"><span class="modifier">public</span> <span class="methodname"><a href="svm.crossvalidate.php" class="methodname">svm::crossvalidate</a></span>(<span class="methodparam"><span class="type"><a href="language.types.array.php" class="type array">array</a></span> <code class="parameter">$problem</code></span>, <span class="methodparam"><span class="type"><a href="language.types.integer.php" class="type int">int</a></span> <code class="parameter">$number_of_folds</code></span>): <span class="type"><a href="language.types.float.php" class="type float">float</a></span></div>
<div class="methodsynopsis dc-description"><span class="modifier">public</span> <span class="methodname"><a href="svm.getoptions.php" class="methodname">getOptions</a></span>(): <span class="type"><a href="language.types.array.php" class="type array">array</a></span></div>
<div class="methodsynopsis dc-description"><span class="modifier">public</span> <span class="methodname"><a href="svm.setoptions.php" class="methodname">setOptions</a></span>(<span class="methodparam"><span class="type"><a href="language.types.array.php" class="type array">array</a></span> <code class="parameter">$params</code></span>): <span class="type"><a href="language.types.boolean.php" class="type bool">bool</a></span></div>
<div class="methodsynopsis dc-description"><span class="modifier">public</span> <span class="methodname"><a href="svm.train.php" class="methodname">svm::train</a></span>(<span class="methodparam"><span class="type"><a href="language.types.array.php" class="type array">array</a></span> <code class="parameter">$problem</code></span>, <span class="methodparam"><span class="type"><a href="language.types.array.php" class="type array">array</a></span> <code class="parameter">$weights</code><span class="initializer"> = ?</span></span>): <span class="type"><a href="class.svmmodel.php" class="type SVMModel">SVMModel</a></span></div>

   }</div>


  </div>


  <div class="section" id="svm.constants">
   <h2 class="title">Constantes predefinidas</h2>
   <div class="section" id="svm.constants.types">
    <h2 class="title">Constantes SVM</h2>
    <dl>

     
      <dt id="svm.constants.c-svc"><strong><code><a href="class.svm.php#svm.constants.c-svc">SVM::C_SVC</a></code></strong></dt>
      <dd>
       <span class="simpara">O tipo básico de SVM C_SVC. O padrão e um bom ponto de partida.</span>
      </dd>
     

     
      <dt id="svm.constants.nu-svc"><strong><code><a href="class.svm.php#svm.constants.nu-svc">SVM::NU_SVC</a></code></strong></dt>
      <dd>
       <span class="simpara">O tipo NU_SVC usa uma ponderação de erro diferente e mais flexível.</span>
      </dd>
     

     
      <dt id="svm.constants.one-class"><strong><code><a href="class.svm.php#svm.constants.one-class">SVM::ONE_CLASS</a></code></strong></dt>
      <dd>
       <span class="simpara">Tipo SVM de uma só classe. Treina apenas em uma única classe, usando valores discrepantes como exemplos negativos.</span>
      </dd>
     

     
      <dt id="svm.constants.epsilon-svr"><strong><code><a href="class.svm.php#svm.constants.epsilon-svr">SVM::EPSILON_SVR</a></code></strong></dt>
      <dd>
       <span class="simpara">Um tipo de SVM para regressão (prevendo um valor em vez de apenas uma classe).</span>
      </dd>
     

     
      <dt id="svm.constants.nu-svr"><strong><code><a href="class.svm.php#svm.constants.nu-svr">SVM::NU_SVR</a></code></strong></dt>
      <dd>
       <span class="simpara">Um tipo de regressão SVM estilo NU</span>
      </dd>
     

     
      <dt id="svm.constants.kernel-linear"><strong><code><a href="class.svm.php#svm.constants.kernel-linear">SVM::KERNEL_LINEAR</a></code></strong></dt>
      <dd>
       <span class="simpara">Um kernel muito simples, pode funcionar bem em problemas de classificação de documentos grandes</span>
      </dd>
     

     
      <dt id="svm.constants.kernel-poly"><strong><code><a href="class.svm.php#svm.constants.kernel-poly">SVM::KERNEL_POLY</a></code></strong></dt>
      <dd>
       <span class="simpara">Um kernel polinomial</span>
      </dd>
     

     
      <dt id="svm.constants.kernel-rbf"><strong><code><a href="class.svm.php#svm.constants.kernel-rbf">SVM::KERNEL_RBF</a></code></strong></dt>
      <dd>
       <span class="simpara">O kernel RBD gaussiano comum. Lida bem com problemas não lineares e é um bom padrão para classificação.</span>
      </dd>
     

     
      <dt id="svm.constants.kernel-sigmoid"><strong><code><a href="class.svm.php#svm.constants.kernel-sigmoid">SVM::KERNEL_SIGMOID</a></code></strong></dt>
      <dd>
       <span class="simpara">Um kernel baseado na função sigmóide. Utilizando isso, a SVM se torna muito semelhante a uma rede neural sigmóide de duas camadas.</span>
      </dd>
     

     
      <dt id="svm.constants.kernel-precomputed"><strong><code><a href="class.svm.php#svm.constants.kernel-precomputed">SVM::KERNEL_PRECOMPUTED</a></code></strong></dt>
      <dd>
       <span class="simpara">Um kernel pré-computado - atualmente sem suporte.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-type"><strong><code><a href="class.svm.php#svm.constants.opt-type">SVM::OPT_TYPE</a></code></strong></dt>
      <dd>
       <span class="simpara">A chave de opções para o tipo SVM.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-kernel-type"><strong><code><a href="class.svm.php#svm.constants.opt-kernel-type">SVM::OPT_KERNEL_TYPE</a></code></strong></dt>
      <dd>
       <span class="simpara">A chave de opções para o tipo de kernel.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-degree"><strong><code><a href="class.svm.php#svm.constants.opt-degree">SVM::OPT_DEGREE</a></code></strong></dt>
      <dd>
       <span class="simpara"/>
      </dd>
     

     
      <dt id="svm.constants.opt-shrinking"><strong><code><a href="class.svm.php#svm.constants.opt-shrinking">SVM::OPT_SHRINKING</a></code></strong></dt>
      <dd>
       <span class="simpara">Parâmetro de treinamento, booleano, para determinar se deve ou não ser usada a heurística de encolhimento.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-probability"><strong><code><a href="class.svm.php#svm.constants.opt-probability">SVM::OPT_PROBABILITY</a></code></strong></dt>
      <dd>
       <span class="simpara">Parâmetro de treinamento, booleano, para coletar e usar estimativas de probabilidade.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-gamma"><strong><code><a href="class.svm.php#svm.constants.opt-gamma">SVM::OPT_GAMMA</a></code></strong></dt>
      <dd>
       <span class="simpara">Parâmetro de algoritmo para tipos de kernel Poly, RBF e sigmóide.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-nu"><strong><code><a href="class.svm.php#svm.constants.opt-nu">SVM::OPT_NU</a></code></strong></dt>
      <dd>
       <span class="simpara">A chave de opção para o parâmetro nu, usada apenas nos tipos NU_SVM.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-eps"><strong><code><a href="class.svm.php#svm.constants.opt-eps">SVM::OPT_EPS</a></code></strong></dt>
      <dd>
       <span class="simpara">A chave de opção para o parâmetro epsilon, usada na regressão Epsilon.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-p"><strong><code><a href="class.svm.php#svm.constants.opt-p">SVM::OPT_P</a></code></strong></dt>
      <dd>
       <span class="simpara">Parâmetro de treinamento usado pela regressão Epsilon SVR.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-coef-zero"><strong><code><a href="class.svm.php#svm.constants.opt-coef-zero">SVM::OPT_COEF_ZERO</a></code></strong></dt>
      <dd>
       <span class="simpara">Parâmetro de algoritmo para kernels Poly e sigmóides</span>
      </dd>
     

     
      <dt id="svm.constants.opt-c"><strong><code><a href="class.svm.php#svm.constants.opt-c">SVM::OPT_C</a></code></strong></dt>
      <dd>
       <span class="simpara">A opção pelo parâmetro de custo que controla a ponderação entre erros e generalidade - efetivamente a penalidade pela classificação incorreta de exemplos de treinamento.</span>
      </dd>
     

     
      <dt id="svm.constants.opt-cache-size"><strong><code><a href="class.svm.php#svm.constants.opt-cache-size">SVM::OPT_CACHE_SIZE</a></code></strong></dt>
      <dd>
       <span class="simpara">Tamanho da memória de cache, em MB</span>
      </dd>
     
    </dl>
   </div>
  </div>



 </div>

 

























<h2>Índice</h2><ul class="chunklist chunklist_reference"><li><a href="svm.construct.php">SVM::__construct</a> — Constr&oacute;i um novo objeto SVM</li><li><a href="svm.crossvalidate.php">SVM::crossvalidate</a> — Testa par&acirc;metros de treinamento em subconjuntos de dados de treinamento</li><li><a href="svm.getoptions.php">SVM::getOptions</a> — Retorna os par&acirc;metros de treinamento atuais</li><li><a href="svm.setoptions.php">SVM::setOptions</a> — Define par&acirc;metros de treinamento</li><li><a href="svm.train.php">SVM::train</a> — Cria um SVMModel com base em dados de treinamento</li></ul>
</div>
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