MARC보기
LDR03812cmm u22006258i 4500
001000000323375
003OCoLC
00520230613120609
006m d
007cr |||||||||||
008210212t20212021cau ob 001 0 eng
010 ▼a 2021006516
020 ▼a 0520382021
020 ▼a 9780520382022 ▼q (electronic bk.)
020 ▼z 9780520382381 ▼q (cloth)
020 ▼z 9780520382046 ▼q (paperback)
035 ▼a 3066447 ▼b (N$T)
035 ▼a (OCoLC)1240263381
037 ▼a 22573/ctv264s8d7 ▼b JSTOR
040 ▼a DLC ▼b eng ▼e rda ▼c DLC ▼d OCLCO ▼d OCLCF ▼d YDX ▼d N$T ▼d EBLCP ▼d JSTOR ▼d 248032
042 ▼a pcc
049 ▼a MAIN
05000 ▼a HD9697.V544
072 7 ▼a SOC ▼x 052000 ▼2 bisacsh
072 7 ▼a COM ▼x 060000 ▼2 bisacsh
072 7 ▼a TEC ▼x 043000 ▼2 bisacsh
072 7 ▼a PER ▼x 010000 ▼2 bisacsh
072 7 ▼a PER ▼x 014000 ▼2 bisacsh
072 7 ▼a SOC ▼x 071000 ▼2 bisacsh
08200 ▼a 384.55/54 ▼2 23
1001 ▼a Frey, Mattias, ▼e author.
24510 ▼a Netflix recommends : ▼b algorithms, film choice, and the history of taste / ▼c Mattias Frey. ▼h [electronic resource]
263 ▼a 2110
264 1 ▼a Oakland, California : ▼b University of California Press, ▼c [2021]
264 4 ▼c 짤2021
300 ▼a 1 online resource
336 ▼a text ▼b txt ▼2 rdacontent
337 ▼a computer ▼b c ▼2 rdamedia
338 ▼a online resource ▼b cr ▼2 rdacarrier
504 ▼a Includes bibliographical references and index.
5050 ▼a Introduction -- Why we need film and series suggestions -- How algorithmic recommender systems work -- Cracking the code, part I : developing Netflix's recommendation algorithms -- Cracking the code, part II : unpacking Netflix's myth of big data -- How real people choose films and series -- Afterword : robot critics vs. human experts -- Appendix : designing the empirical audience study.
520 ▼a "Algorithmic recommender systems, deployed by media companies to suggest content based on users' viewing histories, have inspired hopes for personalized, curated media, but also dire warnings of filter bubbles and media homogeneity. Curiously, both proponents and detractors assume that recommender systems are novel, effective, and widely used methods to choose films and series. Scrutinizing the world's most subscribed streaming service, Netflix, this book challenges that consensus. Investigating real-life users, marketing rhetoric, technical processes, business models, and historical antecedents, Mattias Frey demonstrates that these choice aids are neither as revolutionary nor alarming, neither as trusted nor widely used, as their celebrants and critics maintain. Netflix Recommends illustrates the constellations of sources that real viewers use to choose films and series in the digital age, and argues that, although some lament AI's hostile takeover of humanistic cultures, the thirst for filters, curators, and critics is stronger than ever"-- ▼c Provided by publisher.
588 ▼a Description based on print version record and CIP data provided by publisher; resource not viewed.
590 ▼a WorldCat record variable field(s) change: 072
61020 ▼a Netflix (Firm)
61027 ▼a Netflix (Firm) ▼2 fast ▼0 (OCoLC)fst01788121
650 0 ▼a Streaming video ▼x Social aspects ▼z United States.
650 0 ▼a Recommender systems (Information filtering) ▼x Social aspects.
650 7 ▼a SOCIAL SCIENCE / Media Studies ▼2 bisacsh
651 7 ▼a United States. ▼2 fast ▼0 (OCoLC)fst01204155
655 4 ▼a Electronic books.
77608 ▼i Print version: ▼a Frey, Mattias. ▼t Netflix recommends ▼d Oakland, California : University of California Press, [2021] ▼z 9780520382381 ▼w (DLC) 2021006515
85640 ▼3 EBSCOhost ▼u https://search.ebscohost.com/login.aspx?direct=true&scope=site&db=nlebk&db=nlabk&AN=3066447
938 ▼a EBSCOhost ▼b EBSC ▼n 3066447
990 ▼a 관리자
994 ▼a 92 ▼b N$T