2020
DOI: 10.14687/jhs.v17i4.6088
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A bibliography experiment on research within the scope of industry 4.0 application areas in sports

Abstract: Developed countries develop their production sites within the scope of industry 4.0 technology components and experience constant change and transformation to establish economic superiority. This situation allows them to produce more in various fields and thus to rise to a more advantageous position economically. Industry 4.0 technology affects areas within the scope of the sports industry such as sports tourism, athlete performance, athlete health, sports publishing, sports textile products, sports education … Show more

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Cited by 3 publications
(1 citation statement)
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“…Advances in Mathematical Physics recommendations like what the user is interested in now and improve the user's stickiness [18]. This reason is difficult for the user to accept because the user is likely to not know the person in the algorithm and is not very interested in other people's interests; however, if it is an item-based recommendation algorithm, it can be explained that the item is like an item previously selected by the user so that the user is more likely to accept the result and accept the recommendation, as shown in In some time-related problems, it encountered that the events occurring at one moment are directly influenced by the events occurring at the previous moment, and the hidden Markov model reaps the best application when dealing with these problems.…”
Section: Hidden Markov Model For Sports Video Recognition Analysismentioning
confidence: 99%
“…Advances in Mathematical Physics recommendations like what the user is interested in now and improve the user's stickiness [18]. This reason is difficult for the user to accept because the user is likely to not know the person in the algorithm and is not very interested in other people's interests; however, if it is an item-based recommendation algorithm, it can be explained that the item is like an item previously selected by the user so that the user is more likely to accept the result and accept the recommendation, as shown in In some time-related problems, it encountered that the events occurring at one moment are directly influenced by the events occurring at the previous moment, and the hidden Markov model reaps the best application when dealing with these problems.…”
Section: Hidden Markov Model For Sports Video Recognition Analysismentioning
confidence: 99%