A new chatbot for customer service on social media
Anbang Xu, Zhe Liu, et al.
CHI 2017
Many people turn to their social networks to find information through the practice of question and answering. We believe it is necessary to use different answering strategies based on the type of questions to accommodate the different information needs. In this research, we propose the ASK taxonomy that categorizes questions posted on social networking sites into three types according to the nature of the questioner's inquiry of accuracy, social, or knowledge. To automatically decide which answering strategy to use, we develop a predictive model based on ASK question types using question features from the perspectives of lexical, topical, contextual, and syntactic as well as answer features. By applying the classifier on an annotated data set, we present a comprehensive analysis to compare questions in terms of their word usage, topical interests, temporal and spatial restrictions, syntactic structure, and response characteristics. Our research results show that the three types of questions exhibited different characteristics in the way they are asked. Our automatic classification algorithm achieves an 83% correct labeling result, showing the value of the ASK taxonomy for the design of social question and answering systems.
Anbang Xu, Zhe Liu, et al.
CHI 2017
Yash Bhalgat, Zhe Liu, et al.
KONVENS 2019
Jiawei Chen, Anbang Xu, et al.
CHI EA 2020
Zhe Liu, Anbang Xu, et al.
HT 2017