Pieces of eight: 8-bit neural machine translation
Jerry Quinn, Miguel Ballesteros
NAACL 2018
Virtual agents are becoming a prominent channel of interaction in customer service. Not all customer interactions are smooth, however, and some can become almost comically bad. In such instances, a human agent might need to step in and salvage the conversation. Detecting bad conversations is important since disappointing customer service may threaten customer loyalty and impact revenue. In this paper, we outline an approach to detecting such egregious conversations, using behavioral cues from the user, patterns in agent responses, and useragent interaction. Using logs of two commercial systems, we show that using these features improves the detection F1-score by around 20% over using textual features alone. In addition, we show that those features are common across two quite different domains and, arguably, universal.
Jerry Quinn, Miguel Ballesteros
NAACL 2018
Yufang Hou
NAACL 2018
Elron Bandel, Ranit Aharonov, et al.
ACL 2022
Emmanouil Schinas, Symeon Papadopoulos, et al.
PCI 2013