We compare the relative utility of different automatically computable linguistic feature sets for modeling student learning in computer dialogue tutoring. We use the PARADISE framework (multiple linear regression) to build a learning model from each of 6 linguistic feature sets: 1) surface features, 2) semantic features, 3) pragmatic features, 4) discourse structure features, 5) local dialogue context features, and 6) all feature sets combined. We hypothesize that although more sophisticated linguistic features are harder to obtain, they will yield stronger learning models. We train and test our models on 3 different train/test dataset pairs derived from our 3 spoken dialogue tutoring system corpora. Our results show that more sophisticated...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...
We compare the relative utility of different automatically computable linguistic feature sets for mo...
We compare the relative utility of different automatically computable linguistic feature sets for mo...
We investigate using the PARADISE framework to develop predictive models of system performance in ou...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We investigate using the PARADISE framework to develop predictive models of system performance in ou...
Modelling human tutors' socio-linguistic abilities computationally is necessary to underpin human-co...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
Modelling human tutors' socio-linguistic abilities computationally is necessary to underpin human–co...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...
We compare the relative utility of different automatically computable linguistic feature sets for mo...
We compare the relative utility of different automatically computable linguistic feature sets for mo...
We investigate using the PARADISE framework to develop predictive models of system performance in ou...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We hypothesize that student affect is a useful predictor of spoken dialogue system performance, rela...
We investigate using the PARADISE framework to develop predictive models of system performance in ou...
Modelling human tutors' socio-linguistic abilities computationally is necessary to underpin human-co...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
Modelling human tutors' socio-linguistic abilities computationally is necessary to underpin human–co...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
While human tutors typically interact with students using spoken dialogue, most computer dialogue tu...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...
We examine correlations between dialogue behaviors and learning in tutoring, using two corpora of sp...