Real-time voice affect recognition for call center agents

Call centers depend depend on their agents to effectively serve their clients. But often times, arguments between agents and clients occur. Inability to deal with this problem may lead client discontent, business loss or moving of client to other competitors. Thus, it is important for call centers t...

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Main Authors: De Leon, Sanielle Anne, Paz, Raymund Clint, Tan, Julie Ann
Format: text
Language:English
Published: Animo Repository 2012
Online Access:https://animorepository.dlsu.edu.ph/etd_bachelors/11871
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_bachelors-125162021-09-10T07:04:54Z Real-time voice affect recognition for call center agents De Leon, Sanielle Anne Paz, Raymund Clint Tan, Julie Ann Tan, Julie Ann Call centers depend depend on their agents to effectively serve their clients. But often times, arguments between agents and clients occur. Inability to deal with this problem may lead client discontent, business loss or moving of client to other competitors. Thus, it is important for call centers to handle this disputes. This study aims to build a real-time affect recognition system with the use of dimensional labels to determine the agents' human affective states. This will allow agents to evaluate themselves, improve their performance while talking to their clients and at the same time avoid arguments with clients. A Call Center Affect Recognition System (CARSys) was built in this study. There were two applications developed, namely, CARSys Stand Alone and CARSys Logs. CARSys Stand Alone is the application which predicts affective state in real-time. The representation of affective states is dimensional and the dimensions used was valence and arousal. CARSys Logs, on the other hand, is the application responsible for viewing the logs stored in a server. The results showed that the CARSys needs a lot of improvement in terms of the affect recognition and log generation. The models used by CARSys achieved a mean absolute error (MAE) of 0.2312 and 0.2028 for the valence and arousal, respectively. Testing using the SEMAINE database obtained an MAE of 0.2980 and o.3893 for the valence and arousal, respectively. Testing using the gathered data from CARSys testing, it gained an MAE of 0.2405 for valence and 0.7827 for arousal. 2012-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_bachelors/11871 Bachelor's Theses English Animo Repository
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
description Call centers depend depend on their agents to effectively serve their clients. But often times, arguments between agents and clients occur. Inability to deal with this problem may lead client discontent, business loss or moving of client to other competitors. Thus, it is important for call centers to handle this disputes. This study aims to build a real-time affect recognition system with the use of dimensional labels to determine the agents' human affective states. This will allow agents to evaluate themselves, improve their performance while talking to their clients and at the same time avoid arguments with clients. A Call Center Affect Recognition System (CARSys) was built in this study. There were two applications developed, namely, CARSys Stand Alone and CARSys Logs. CARSys Stand Alone is the application which predicts affective state in real-time. The representation of affective states is dimensional and the dimensions used was valence and arousal. CARSys Logs, on the other hand, is the application responsible for viewing the logs stored in a server. The results showed that the CARSys needs a lot of improvement in terms of the affect recognition and log generation. The models used by CARSys achieved a mean absolute error (MAE) of 0.2312 and 0.2028 for the valence and arousal, respectively. Testing using the SEMAINE database obtained an MAE of 0.2980 and o.3893 for the valence and arousal, respectively. Testing using the gathered data from CARSys testing, it gained an MAE of 0.2405 for valence and 0.7827 for arousal.
format text
author De Leon, Sanielle Anne
Paz, Raymund Clint
Tan, Julie Ann
Tan, Julie Ann
spellingShingle De Leon, Sanielle Anne
Paz, Raymund Clint
Tan, Julie Ann
Tan, Julie Ann
Real-time voice affect recognition for call center agents
author_facet De Leon, Sanielle Anne
Paz, Raymund Clint
Tan, Julie Ann
Tan, Julie Ann
author_sort De Leon, Sanielle Anne
title Real-time voice affect recognition for call center agents
title_short Real-time voice affect recognition for call center agents
title_full Real-time voice affect recognition for call center agents
title_fullStr Real-time voice affect recognition for call center agents
title_full_unstemmed Real-time voice affect recognition for call center agents
title_sort real-time voice affect recognition for call center agents
publisher Animo Repository
publishDate 2012
url https://animorepository.dlsu.edu.ph/etd_bachelors/11871
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