Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Autoren

  • Christian Otto
  • Ran Yu
  • Georg Pardi
  • Johannes Von Hoyer
  • Markus Rokicki
  • Anett Hoppe
  • Peter Holtz
  • Yvonne Kammerer
  • Stefan Dietze
  • Ralph Ewerth

Organisationseinheiten

Externe Organisationen

  • Technische Informationsbibliothek (TIB) Leibniz-Informationszentrum Technik und Naturwissenschaften und Universitätsbibliothek
  • GESIS - Leibniz-Institut für Sozialwissenschaften
  • Leibniz-Institut für Wissensmedien (IWM)
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Titel des SammelwerksArtificial Intelligence in Education
Untertitel22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I
Herausgeber/-innenIdo Roll, Danielle McNamara, Sergey Sosnovsky, Rose Luckin, Vania Dimitrova
Seiten318-330
Seitenumfang13
Band1
ISBN (elektronisch)978-3-030-78292-4
PublikationsstatusVeröffentlicht - 11 Juni 2021

Publikationsreihe

NameArtificial Intelligence in Education
Band12748
ISSN (Print)0302-9743
ISSN (elektronisch)1611-3349

Abstract

In informal learning scenarios the popularity of multimedia content, such as video tutorials or lectures, has significantly increased. Yet, the users’ interactions, navigation behavior, and consequently learning outcome, have not been researched extensively. Related work in this field, also called search as learning, has focused on behavioral or text resource features to predict learning outcome and knowledge gain. In this paper, we investigate whether we can exploit features representing multimedia resource consumption to predict the knowledge gain (KG) during Web search from in-session data, that is without prior knowledge about the learner. For this purpose, we suggest a set of multimedia features related to image and video consumption. Our feature extraction is evaluated in a lab study with 113 participants where we collected data for a given search as learning task on the formation of thunderstorms and lightning. We automatically analyze the monitored log data and utilize state-of-the-art computer vision methods to extract features about the seen multimedia resources. Experimental results demonstrate that multimedia features can improve KG prediction. Finally, we provide an analysis on feature importance (text and multimedia) for KG prediction.

ASJC Scopus Sachgebiete

Zitieren

Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption. / Otto, Christian; Yu, Ran; Pardi, Georg et al.
Artificial Intelligence in Education: 22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I. Hrsg. / Ido Roll; Danielle McNamara; Sergey Sosnovsky; Rose Luckin; Vania Dimitrova. Band 1 2021. S. 318-330 Chapter 26 (Artificial Intelligence in Education; Band 12748).

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Otto, C, Yu, R, Pardi, G, Von Hoyer, J, Rokicki, M, Hoppe, A, Holtz, P, Kammerer, Y, Dietze, S & Ewerth, R 2021, Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption. in I Roll, D McNamara, S Sosnovsky, R Luckin & V Dimitrova (Hrsg.), Artificial Intelligence in Education: 22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I. Bd. 1, Chapter 26, Artificial Intelligence in Education, Bd. 12748, S. 318-330. https://doi.org/10.1007/978-3-030-78292-4_26
Otto, C., Yu, R., Pardi, G., Von Hoyer, J., Rokicki, M., Hoppe, A., Holtz, P., Kammerer, Y., Dietze, S., & Ewerth, R. (2021). Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption. In I. Roll, D. McNamara, S. Sosnovsky, R. Luckin, & V. Dimitrova (Hrsg.), Artificial Intelligence in Education: 22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I (Band 1, S. 318-330). Artikel Chapter 26 (Artificial Intelligence in Education; Band 12748). https://doi.org/10.1007/978-3-030-78292-4_26
Otto C, Yu R, Pardi G, Von Hoyer J, Rokicki M, Hoppe A et al. Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption. in Roll I, McNamara D, Sosnovsky S, Luckin R, Dimitrova V, Hrsg., Artificial Intelligence in Education: 22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I. Band 1. 2021. S. 318-330. Chapter 26. (Artificial Intelligence in Education). doi: 10.1007/978-3-030-78292-4_26
Otto, Christian ; Yu, Ran ; Pardi, Georg et al. / Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption. Artificial Intelligence in Education: 22nd International Conference, AIED 2021, Utrecht, The Netherlands, June 14–18, 2021, Proceedings, Part I. Hrsg. / Ido Roll ; Danielle McNamara ; Sergey Sosnovsky ; Rose Luckin ; Vania Dimitrova. Band 1 2021. S. 318-330 (Artificial Intelligence in Education).
Download
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title = "Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption",
abstract = "In informal learning scenarios the popularity of multimedia content, such as video tutorials or lectures, has significantly increased. Yet, the users{\textquoteright} interactions, navigation behavior, and consequently learning outcome, have not been researched extensively. Related work in this field, also called search as learning, has focused on behavioral or text resource features to predict learning outcome and knowledge gain. In this paper, we investigate whether we can exploit features representing multimedia resource consumption to predict the knowledge gain (KG) during Web search from in-session data, that is without prior knowledge about the learner. For this purpose, we suggest a set of multimedia features related to image and video consumption. Our feature extraction is evaluated in a lab study with 113 participants where we collected data for a given search as learning task on the formation of thunderstorms and lightning. We automatically analyze the monitored log data and utilize state-of-the-art computer vision methods to extract features about the seen multimedia resources. Experimental results demonstrate that multimedia features can improve KG prediction. Finally, we provide an analysis on feature importance (text and multimedia) for KG prediction.",
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author = "Christian Otto and Ran Yu and Georg Pardi and {Von Hoyer}, Johannes and Markus Rokicki and Anett Hoppe and Peter Holtz and Yvonne Kammerer and Stefan Dietze and Ralph Ewerth",
note = "Funding Information: Keywords: Knowledge gain · Multimedia information extraction · Document layout analysis · Search as learning · Learning resources C. Otto and R. Yu—Authors contributed equally to this work. Part of this work is financially supported by the Leibniz Association, Germany (Leibniz Competition 2018, funding line “Collaborative Excellence”, project SALIENT [K68/2017]).",
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AU - Otto, Christian

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AU - Rokicki, Markus

AU - Hoppe, Anett

AU - Holtz, Peter

AU - Kammerer, Yvonne

AU - Dietze, Stefan

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N1 - Funding Information: Keywords: Knowledge gain · Multimedia information extraction · Document layout analysis · Search as learning · Learning resources C. Otto and R. Yu—Authors contributed equally to this work. Part of this work is financially supported by the Leibniz Association, Germany (Leibniz Competition 2018, funding line “Collaborative Excellence”, project SALIENT [K68/2017]).

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N2 - In informal learning scenarios the popularity of multimedia content, such as video tutorials or lectures, has significantly increased. Yet, the users’ interactions, navigation behavior, and consequently learning outcome, have not been researched extensively. Related work in this field, also called search as learning, has focused on behavioral or text resource features to predict learning outcome and knowledge gain. In this paper, we investigate whether we can exploit features representing multimedia resource consumption to predict the knowledge gain (KG) during Web search from in-session data, that is without prior knowledge about the learner. For this purpose, we suggest a set of multimedia features related to image and video consumption. Our feature extraction is evaluated in a lab study with 113 participants where we collected data for a given search as learning task on the formation of thunderstorms and lightning. We automatically analyze the monitored log data and utilize state-of-the-art computer vision methods to extract features about the seen multimedia resources. Experimental results demonstrate that multimedia features can improve KG prediction. Finally, we provide an analysis on feature importance (text and multimedia) for KG prediction.

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