2014 26th International Teletraffic Congress (ITC) 2014
DOI: 10.1109/itc.2014.6932936
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Catalog dynamics: Impact of content publishing and perishing on the performance of a LRU cache

Abstract: The Internet heavily relies on Content Distribution Networks and transparent caches to cope with the ever-increasing traffic demand of users. Content, however, is essentially versatile: once published at a given time, its popularity vanishes over time. All requests for a given document are then concentrated between the publishing time and an effective perishing time.In this paper, we propose a new model for the arrival of content requests, which takes into account the dynamical nature of the content catalog. B… Show more

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Cited by 38 publications
(74 citation statements)
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“…A key point in our approach is that we consider the probability that a document receives a given number of requests, rather than the probability that a request is directed to a given document. This representation is consistent with recently developed caching models [17,21,6]. Moreover, it allows us to avoid the fitting of a rank-frequency plot, which is in essence an order statistic and exhibits over-fitting.…”
Section: Summary Of Resultssupporting
confidence: 81%
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“…A key point in our approach is that we consider the probability that a document receives a given number of requests, rather than the probability that a request is directed to a given document. This representation is consistent with recently developed caching models [17,21,6]. Moreover, it allows us to avoid the fitting of a rank-frequency plot, which is in essence an order statistic and exhibits over-fitting.…”
Section: Summary Of Resultssupporting
confidence: 81%
“…#vod) set. More details on the collection and processing of these two datasets can be found in [17].…”
Section: Datasetsmentioning
confidence: 99%
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