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4. Implemented a redirection system to see the voices in the chat context
5. Use the utterances temporal timestamps (“hot” moments identification)
• It doesn't consider the distribution of voices, but only the time when they were input
• Captures the moments when the participants are intensely disputing a subject
• Allows filtering the chat by adjusting the maximum accepted delay between
utterances  only highly debated fragments are kept for analysis
100%, 75% 40% 15%
6. Overlap “Hot Moments” and “Sentence Level” graphics (“Hot sentences”)
• See the correlation between the appearances of certain concepts and the disputed
parts of the chat  identify more important or inflammatory concepts
Purpose
• Improve existing application for identification of important moments from chats
Existing Application
• Use Polyphony Theory to identify “voices” that are present in chat
conversations, following Bakhtin’s perspective of what a voice should be
• Semi-automatically identify and classify the important moments from
collaborative learning chats based on the interaction of different voices:
• Pivotal moment - in the same utterance, a voice “fades out” while another appears;
• Convergent moment - 2 or more voices appear for the last time in the same utterance;
• Singular moment - several voices appear for the last time except for one which “lives”;
• Divergent moment - 2 or more voices meet and then
they appear in different areas of the conversation
• Relies on the user knowledge to choose the right
voices for detecting the important moments
• Built in Java – only locally available
• Ignores the utterances time stamps
Improvements
1. Increase availability – web app (http://pivotal-moments.ddns.net/moments/)
2. Uses different representations for different types of important moments for
easier recognition
Pivotal moments Convergent + Divergent moments Singular + Divergent moments
3. Avoid user’s intervention for a better detection of the important moments
• The user choses how many voices to be considered (n) and the application detects all
the moments that may be discovered involving any combination of n voices
Identification and Classification of the Most Important
Moments in Students’ Collaborative Chats
Costin-Gabriel Chiru and Remus Decea
“Politehnica” University of Bucharest, Department of Computer Science and Engineering
costin.chiru@cs.pub.ro, remus.decea@gmail.com
Acknowledgement: This work has been funded by University Politehnica of Bucharest,
through the “Excellence Research Grants” Program, UPB-GEX. Identifier: UPB-EXCELENȚĂ-
2016, Aplicarea metodelor de învățare automată în analiza seriilor de timp (Applying
machine learning techniques in time series analysis), Contract number 09/26.09.2016.
Conclusions
• Improved version of an application for the identification and classification of
important moments from the students collaborative chats:
• Also consider the intensity of dialogue in various fragments, besides the concepts
distribution throughout the chat (as in the first version)
• Shows important moments that were automatically identified for various sets of
concepts, besides the ones that resulted from the user’s choices (as in the first version) 
more accurate results
• Web application available at http://pivotal-moments.ddns.net/moments/
• The visualization graphics provided by the old version of the application allows:
• Seen the main topics that were debated and,
• Speculating whether the participants reached agreement or not.
• With the help of the “Hot Moments” view the user may also:
• View the intensively disputed parts of a chat,
• See whether the “Hot Moments” overlap with the voices from the chat,
• Discover inflammatory topics, along with the participants that get involved in such talks
• Future work: collaborative analysis tools, so that multiple persons could
participate in the analysis

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Identification and Classification of the Most Important Moments in Students’ Collaborative Chats

  • 1. 4. Implemented a redirection system to see the voices in the chat context 5. Use the utterances temporal timestamps (“hot” moments identification) • It doesn't consider the distribution of voices, but only the time when they were input • Captures the moments when the participants are intensely disputing a subject • Allows filtering the chat by adjusting the maximum accepted delay between utterances  only highly debated fragments are kept for analysis 100%, 75% 40% 15% 6. Overlap “Hot Moments” and “Sentence Level” graphics (“Hot sentences”) • See the correlation between the appearances of certain concepts and the disputed parts of the chat  identify more important or inflammatory concepts Purpose • Improve existing application for identification of important moments from chats Existing Application • Use Polyphony Theory to identify “voices” that are present in chat conversations, following Bakhtin’s perspective of what a voice should be • Semi-automatically identify and classify the important moments from collaborative learning chats based on the interaction of different voices: • Pivotal moment - in the same utterance, a voice “fades out” while another appears; • Convergent moment - 2 or more voices appear for the last time in the same utterance; • Singular moment - several voices appear for the last time except for one which “lives”; • Divergent moment - 2 or more voices meet and then they appear in different areas of the conversation • Relies on the user knowledge to choose the right voices for detecting the important moments • Built in Java – only locally available • Ignores the utterances time stamps Improvements 1. Increase availability – web app (http://pivotal-moments.ddns.net/moments/) 2. Uses different representations for different types of important moments for easier recognition Pivotal moments Convergent + Divergent moments Singular + Divergent moments 3. Avoid user’s intervention for a better detection of the important moments • The user choses how many voices to be considered (n) and the application detects all the moments that may be discovered involving any combination of n voices Identification and Classification of the Most Important Moments in Students’ Collaborative Chats Costin-Gabriel Chiru and Remus Decea “Politehnica” University of Bucharest, Department of Computer Science and Engineering costin.chiru@cs.pub.ro, remus.decea@gmail.com Acknowledgement: This work has been funded by University Politehnica of Bucharest, through the “Excellence Research Grants” Program, UPB-GEX. Identifier: UPB-EXCELENȚĂ- 2016, Aplicarea metodelor de învățare automată în analiza seriilor de timp (Applying machine learning techniques in time series analysis), Contract number 09/26.09.2016. Conclusions • Improved version of an application for the identification and classification of important moments from the students collaborative chats: • Also consider the intensity of dialogue in various fragments, besides the concepts distribution throughout the chat (as in the first version) • Shows important moments that were automatically identified for various sets of concepts, besides the ones that resulted from the user’s choices (as in the first version)  more accurate results • Web application available at http://pivotal-moments.ddns.net/moments/ • The visualization graphics provided by the old version of the application allows: • Seen the main topics that were debated and, • Speculating whether the participants reached agreement or not. • With the help of the “Hot Moments” view the user may also: • View the intensively disputed parts of a chat, • See whether the “Hot Moments” overlap with the voices from the chat, • Discover inflammatory topics, along with the participants that get involved in such talks • Future work: collaborative analysis tools, so that multiple persons could participate in the analysis