Self-similarity in World Wide Web traffic: evidence and possible causes

@inproceedings{Crovella1996SelfsimilarityIW,
  title={Self-similarity in World Wide Web traffic: evidence and possible causes},
  author={Mark Crovella and Azer Bestavros},
  booktitle={SIGMETRICS '96},
  year={1996}
}
Recently the notion of self-similarity has been shown to apply to wide-area and local-area network traffic. In this paper we examine the mechanisms that give rise to the self-similarity of network traffic. We present a hypothesized explanation for the possible self-similarity of traffic by using a particular subset of wide area traffic: traffic due to the World Wide Web (WWW). Using an extensive set of traces of actual user executions of NCSA Mosaic, reflecting over half a million requests for… CONTINUE READING

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