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    IWILDS'22 - Third International Workshop on Investigating Learning During Web Search
    (New York,NY,United States : Association for Computing Machinery, 2022) Hoppe, Anett; Yu, Ran; Liu, Jiqun; Amigo, Enrique
    Since its inception, the World Wide Web has become a major information source, consulted for a diversity of informational tasks. With an abundance of information available online, Web search engines have been a main entry point, supporting users in finding suitable Web content for ever more complex information needs. The IWILDS workshop series invites research on complex search activities related to human learning. It provides an interdisciplinary platform for the presentation and discussion of recent research on human learning on the Web, welcoming perspectives from computer & information science, education and psychology.
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    The Search as Learning Spaceship: Toward a Comprehensive Model of Psychological and Technological Facets of Search as Learning
    (Lausanne : Frontiers Research Foundation, 2022) von Hoyer, Johannes; Hoppe, Anett; Kammerer, Yvonne; Otto, Christian; Pardi, Georg; Rokicki, Markus; Yu, Ran; Dietze, Stefan; Ewerth, Ralph; Holtz, Peter
    Using a Web search engine is one of today’s most frequent activities. Exploratory search activities which are carried out in order to gain knowledge are conceptualized and denoted as Search as Learning (SAL). In this paper, we introduce a novel framework model which incorporates the perspective of both psychology and computer science to describe the search as learning process by reviewing recent literature. The main entities of the model are the learner who is surrounded by a specific learning context, the interface that mediates between the learner and the information environment, the information retrieval (IR) backend which manages the processes between the interface and the set of Web resources, that is, the collective Web knowledge represented in resources of different modalities. At first, we provide an overview of the current state of the art with regard to the five main entities of our model, before we outline areas of future research to improve our understanding of search as learning processes.