Predicting Knowledge Gain During Web Search Based on Multimedia Resource Consumption

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 of 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.

[1]  Felipe Moraes,et al.  Contrasting Search as a Learning Activity with Instructor-designed Learning , 2018, CIKM.

[2]  Katharina Scheiter,et al.  The role of spatial descriptions in learning from multimedia , 2011, Comput. Hum. Behav..

[3]  Katharina Scheiter,et al.  Examining learning from text and pictures for different task types: Does the multimedia effect differ for conceptual, causal, and procedural tasks? , 2012, Comput. Hum. Behav..

[4]  Jo-Anne LeFevre,et al.  Cognitive load in hypertext reading: A review , 2007, Comput. Hum. Behav..

[5]  Ryen W. White,et al.  Lessons from the journey: a query log analysis of within-session learning , 2014, WSDM.

[6]  Sibel Adali,et al.  This Just In: Fake News Packs a Lot in Title, Uses Simpler, Repetitive Content in Text Body, More Similar to Satire than Real News , 2017, Proceedings of the International AAAI Conference on Web and Social Media.

[7]  Stefan Dietze,et al.  Analyzing Knowledge Gain of Users in Informational Search Sessions on the Web , 2018, CHIIR.

[8]  Andrei Broder,et al.  A taxonomy of web search , 2002, SIGF.

[9]  Kevyn Collins-Thompson,et al.  Towards searching as a learning process: A review of current perspectives and future directions , 2016, J. Inf. Sci..

[10]  G. Harry McLaughlin,et al.  SMOG Grading - A New Readability Formula. , 1969 .

[11]  Peter Holtz,et al.  The Role of Cognitive Abilities and Time Spent on Texts and Videos in a Multimodal Searching as Learning Task , 2020, CHIIR.

[12]  Kevyn Collins-Thompson,et al.  Search as Learning (Dagstuhl Seminar 17092) , 2017, Dagstuhl Reports.

[13]  Maxine Eskénazi,et al.  Combining Lexical and Grammatical Features to Improve Readability Measures for First and Second Language Texts , 2007, NAACL.

[14]  R. Mayer,et al.  A Split-Attention Effect in Multimedia Learning: Evidence for Dual Processing Systems in Working Memory , 1998 .

[15]  Jacek Gwizdka,et al.  Measuring Learning During Search: Differences in Interactions, Eye-Gaze, and Semantic Similarity to Expert Knowledge , 2019, CHIIR.

[16]  Benjamin S. Bloom,et al.  A Taxonomy for Learning, Teaching, and Assessing: A Revision of Bloom's Taxonomy of Educational Objectives , 2000 .

[17]  R. P. Fishburne,et al.  Derivation of New Readability Formulas (Automated Readability Index, Fog Count and Flesch Reading Ease Formula) for Navy Enlisted Personnel , 1975 .

[18]  Wei-Yin Loh,et al.  Classification and regression trees , 2011, WIREs Data Mining Knowl. Discov..

[19]  Kevyn Collins-Thompson,et al.  Exploring Document Retrieval Features Associated with Improved Short- and Long-term Vocabulary Learning Outcomes , 2018, CHIIR.

[20]  Stefan Dietze,et al.  Predicting User Knowledge Gain in Informational Search Sessions , 2018, SIGIR.

[21]  Christopher D. Manning,et al.  Introduction to Information Retrieval , 2010, J. Assoc. Inf. Sci. Technol..

[22]  Pertti Vakkari,et al.  Searching as learning: A systematization based on literature , 2016, J. Inf. Sci..

[23]  Bo Chen,et al.  MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications , 2017, ArXiv.

[24]  Kevyn Collins-Thompson,et al.  Assessing Learning Outcomes in Web Search: A Comparison of Tasks and Query Strategies , 2016, CHIIR.

[25]  Klaus Krippendorff,et al.  Estimating the Reliability, Systematic Error and Random Error of Interval Data , 1970 .

[26]  Ralph Ewerth,et al.  Investigating Correlations of Automatically Extracted Multimodal Features and Lecture Video Quality , 2019, Proceedings of the 1st International Workshop on Search as Learning with Multimedia Information.