Mnemonic Lossy Counting: An Efficient and Accurate Heavy-hitters Identification Algorithm - Archive ouverte HAL Accéder directement au contenu
Communication Dans Un Congrès Année : 2010

Mnemonic Lossy Counting: An Efficient and Accurate Heavy-hitters Identification Algorithm

Résumé

Identifying heavy-hitter traffic flows efficiently and accurately is essential for Internet security, accounting and traffic engineering. However, finding all heavy-hitters might require large memory for storage of flows information that is incompatible with the usage of fast and small memory. Moreover, upcoming 100Gbps transmission rates make this recognition more challenging. How to improve the accuracy of heavy-hitters identification with limited memory space has become a critical issue. This paper presents a scalable algorithm named Mnemonic Lossy Counting (MLC) that improves the accuracy of heavy-hitters identification while having a reasonable time and space complexity. MLC algorithm holds potential candidate heavy-hitters in a historical information table. This table is used to obtain tighter error bounds on the estimated sizes of candidate heavy-hitters. We validate the MLC algorithm using real network traffic traces, and we compared its performance with two state-of-theart algorithms, namely Lossy Counting (LC) and Probabilistic Lossy Counting (PLC). The results reveal that: 1) with same set of parameters and memory usage, MLC achieves between 31.5% and 6.67% fewer false positives than LC and PLC. 2) MLC and LC have a zero false negative ratio, whereas 38% of the cases PLC has a non-zero false negatives and PLC can miss up to 4.4% of heavy-hitters. 3) MLC has a slightly lower memory cost than LC during the first few windows and its memory usage decreases with time, when PLC memory usage declines sharply. 4) MLC has similar runtime than LC, and smaller time than PLC.
Fichier principal
Vignette du fichier
Mnemonic-Lossy-Counting-Rong.pdf (617.31 Ko) Télécharger le fichier
Origine : Fichiers produits par l'(les) auteur(s)
Loading...

Dates et versions

hal-00527094 , version 1 (20-10-2010)

Identifiants

  • HAL Id : hal-00527094 , version 1

Citer

Rong Qiong, Guangxing Zhang, Gaogang Xie, Kavé Salamatian. Mnemonic Lossy Counting: An Efficient and Accurate Heavy-hitters Identification Algorithm. 29th IEEE International Performance Computing and Communications Conference IPCCC 2010, Dec 2010, Albuquerque, United States. IPCC 2010 proceeding. ⟨hal-00527094⟩
124 Consultations
358 Téléchargements

Partager

Gmail Facebook X LinkedIn More