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<biblioentry xreflabel="1015349" id="1015349">
   <authorgroup>
       <author><firstname>Hieu</firstname><othername role="mi">T.</othername><surname>Nguyen</surname></author>
       <author><firstname>Arnold</firstname><surname>Smeulders</surname></author> 
   </authorgroup>
<citetitle pubwork="article">Active learning using pre&#45;clustering</citetitle>

   <publisher>
      <publishername>ACM Press</publishername>
   </publisher>


   <artpagenums>79</artpagenums> 
   <pubdate>2004</pubdate>  
   <abstract>
      <para>The paper is concerned with two&#45;class active learning. While the common approach for collecting data in active learning is to select samples close to the classification boundary&#44; better performance can be achieved by taking into account the prior data distribution. The main contribution of the paper is a formal framework that incorporates clustering into active learning. The algorithm first constructs a classifier on the set of the cluster representatives&#44; and then propagates the classification decision to the other samples via a local noise model. The proposed model allows to select the most representative samples as well as to avoid repeatedly labeling samples in the same cluster. During the active learning process&#44; the clustering is adjusted using the coarse&#45;to&#45;fine strategy in order to balance between the advantage of large clusters and the accuracy of the data representation. The results of experiments in image databases show a better performance of our algorithm compared to the current methods.
      </para>
   </abstract>
</biblioentry>
</bibliography>
