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<Paper uid="P06-2121">
  <Title>HAL-based Cascaded Model for Variable-Length Semantic Pattern Induction from Psychiatry Web Resources</Title>
  <Section position="2" start_page="0" end_page="0" type="abstr">
    <SectionTitle>
Abstract
</SectionTitle>
    <Paragraph position="0"> Negative life events play an important role in triggering depressive episodes.</Paragraph>
    <Paragraph position="1"> Developing psychiatric services that can automatically identify such events is beneficial for mental health care and prevention. Before these services can be provided, some meaningful semantic patterns, such as &lt;lost, parents&gt;, have to be extracted. In this work, we present a text mining framework capable of inducing variable-length semantic patterns from unannotated psychiatry web resources.</Paragraph>
    <Paragraph position="2"> This framework integrates a cognitive motivated model, Hyperspace Analog to Language (HAL), to represent words as well as combinations of words. Then, a cascaded induction process (CIP) bootstraps with a small set of seed patterns and incorporates relevance feedback to iteratively induce more relevant patterns.</Paragraph>
    <Paragraph position="3"> The experimental results show that by combining the HAL model and relevance feedback, the CIP can induce semantic patterns from the unannotated web corpora so as to reduce the reliance on annotated corpora.</Paragraph>
  </Section>
class="xml-element"></Paper>
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