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function words 9.97009E-4
topic features 9.94248E-4
same classification 9.74591E-4
topic space 9.47282E-4
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theme classification 9.455240000000001E-4
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classification performance 9.34948E-4
dialogue representation 9.29579E-4
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project corpus 9.07201E-4
text documents 9.03086E-4
unnecessary words 8.95215E-4
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discriminative words 8.80972E-4
representation paradigm 8.80304E-4
words fine 8.73945E-4
original training 8.73286E-4
dialogue content 8.70751E-4
representative words 8.67197E-4
decoda corpus 8.64833E-4
training dataset 8.6137E-4
coda corpus 8.549079999999999E-4
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space size 8.41305E-4
variability matrix 8.402220000000001E-4
models 8.37091E-4
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same way 8.28829E-4
test dataset 8.27802E-4
dialogue matrix 8.27768E-4
single topic 8.24107E-4
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classification results 8.182790000000001E-4
test sets 8.17074E-4
main theme 8.16711E-4
time con 8.14576E-4
many feature 8.14555E-4
test baseline 8.11312E-4
various topic 8.105670000000001E-4
vocabulary space 8.10028E-4
same speaker 8.04693E-4
compact representation 8.034940000000001E-4
factor space 7.98617E-4
text clas 7.97823E-4
classification task 7.93677E-4
transcription representation 7.86792E-4
new method 7.83211E-4
