International audienceMany companies make use of customer service chats to help the customer and try to solve their problem. However, customer service data is confidential and as such, cannot easily be shared in the research community. This also implies that these data are rarely labeled, making it difficult to take advantage of it with machine learning methods. In this paper we present the first work on a customer’s problem status prediction and identification of problematic conversations. Given very small subsets of labeled textual conversations and unlabeled ones, we propose a semi-supervised framework dedicated to customer service data leveraging speaker role information to adapt the model to the domain and the task using a two-step pro...
In a customer service system, dialogue summarization can boost service efficiency by automatically c...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
Many companies make use of customer service chats to help the customer and try to solve their proble...
This paper examines emotion intensity prediction in dialogs between clients and customer support rep...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
This project investigated how machine learning could be used to classify voice calls in a customer s...
This project investigated how machine learning could be used to classify voice calls in a customer s...
Contact centres are one of the most important channels by which many private and public organization...
Contact centres are one of the most important channels by which many private and public organization...
Sentiment analysis in dialogues plays a critical role in dialogue data analysis. However, previous s...
This paper examines emotion intensity prediction in dialogs between clients and customer support rep...
Abstract⎯. We focus on online resolution of customer complaints. An efficient way to assist customer...
We investigate the task of inferring conversational dependencies between messages in one-on-one onli...
Site Reliability Engineers (SREs) play a key role in identifying the cause of an issue and preformin...
In a customer service system, dialogue summarization can boost service efficiency by automatically c...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
Many companies make use of customer service chats to help the customer and try to solve their proble...
This paper examines emotion intensity prediction in dialogs between clients and customer support rep...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
This project investigated how machine learning could be used to classify voice calls in a customer s...
This project investigated how machine learning could be used to classify voice calls in a customer s...
Contact centres are one of the most important channels by which many private and public organization...
Contact centres are one of the most important channels by which many private and public organization...
Sentiment analysis in dialogues plays a critical role in dialogue data analysis. However, previous s...
This paper examines emotion intensity prediction in dialogs between clients and customer support rep...
Abstract⎯. We focus on online resolution of customer complaints. An efficient way to assist customer...
We investigate the task of inferring conversational dependencies between messages in one-on-one onli...
Site Reliability Engineers (SREs) play a key role in identifying the cause of an issue and preformin...
In a customer service system, dialogue summarization can boost service efficiency by automatically c...
The objective of this thesis work is to identify a clustering setting that provides human annotators...
The objective of this thesis work is to identify a clustering setting that provides human annotators...