Building a New Student Model to Support Adaptive Tutoring in a Natural Language Dialogue System By
نویسندگان
چکیده
Evens, who mentored and encouraged me to pursue my degree from the first day I met her. Medical College. Their insight and enthusiasm have made a huge impact on my thinking of tutoring systems. I also want to thank my colleagues in Circsim-Tutor project. It was such a pleasure to working with them. Finally thank you Wenhui. You are the one who is always there for me. does not reflect the position or policy of the government and no official endorsement should be inferred.
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