tool,5-1-N03-1012,ak metric </term> . In this paper we present <term> ONTOSCORE </term> , a system for scoring sets of <term>
other,13-1-N03-1012,ak </term> , a system for scoring sets of <term> concepts </term> on the basis of an <term> ontology </term>
tech,19-1-N03-1012,ak <term> concepts </term> on the basis of an <term> ontology </term> . We apply our <term> system </term>
tech,3-2-N03-1012,ak <term> ontology </term> . We apply our <term> system </term> to the task of scoring alternative
other,10-2-N03-1012,ak to the task of scoring alternative <term> speech recognition hypotheses ( SRH ) </term> in terms of their <term> semantic coherence
other,20-2-N03-1012,ak hypotheses ( SRH ) </term> in terms of their <term> semantic coherence </term> . We conducted an <term> annotation
other,3-3-N03-1012,ak coherence </term> . We conducted an <term> annotation experiment </term> and showed that <term> human annotators
other,8-3-N03-1012,ak annotation experiment </term> and showed that <term> human annotators </term> can reliably differentiate between
other,18-3-N03-1012,ak semantically coherent and incoherent <term> speech recognition hypotheses </term> . An evaluation of our <term> system
tech,4-4-N03-1012,ak hypotheses </term> . An evaluation of our <term> system </term> against the <term> annotated data </term>
lr,7-4-N03-1012,ak our <term> system </term> against the <term> annotated data </term> shows that , it successfully classifies
lr,19-4-N03-1012,ak successfully classifies 73.2 % in a <term> German corpus </term> of 2.284 <term> SRHs </term> as either
other,23-4-N03-1012,ak <term> German corpus </term> of 2.284 <term> SRHs </term> as either coherent or incoherent
measure(ment),32-4-N03-1012,ak either coherent or incoherent ( given a <term> baseline </term> of 54.55 % ) . We propose a new <term>
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