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Part of the book series: The Information Retrieval Series ((INRE,volume 50))

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Abstract

This chapter introduces the main objectives and target audience of the book, provides a brief introduction to the fundamentals of IRRSs, raises awareness of the various stakeholders involved in IRRSs, and delineates some use cases to illustrate concepts and solutions discussed throughout the book.

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Schedl, M., Anelli, V.W., Lex, E. (2025). Introduction. In: Technical and Regulatory Perspectives on Information Retrieval and Recommender Systems. The Information Retrieval Series, vol 50. Springer, Cham. https://doi.org/10.1007/978-3-031-69978-8_1

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