Abstract — Predictive methods for learning network distances are often more desirable than direct performance measurements between end hosts. Yet, predicting network distances remains an open and difficult problem, as the results from a number of comparative and analytical studies have shown. From an application requirements perspective, there is significant room for improvement in achieving prediction accuracies at a satisfactory level. In this paper, we develop and analyze a new, machine learning-based approach to distance prediction that seeks to capture and generalize geographical characteristics between Internet node pairs, instead of relying on direct and ongoing measurements of partial paths. We apply a basic algorithm in machine lea...
peer reviewedThis paper proposes a network proximity service based on the neighborhood models used ...
This thesis deals with delay prediction issue between nodes on the Internet. Accurate delay predicti...
Current internet more and more often faces the problem of the right definition of distance between t...
Trip Time (RTT) measurements to predict the N 2 RTTs among N nodes. Distance prediction can be appli...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Coordinates-based distance prediction algorithms can improve the performance of many Internet applic...
Shortest-path distances on road networks have many applications such as finding nearest places of in...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Several emerging large-scale Internet applications such as Content Distribution Networks, and Peer-t...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Distance prediction algorithms use O(N) Round Trip Time (RTT) measurements to predict the N2 RTTs am...
Abstract—Topological distance estimation is the key to the efficiency in distributed systems and pee...
Network proximity and latency estimation is an important component in discovering and locating servi...
An active line of research in the networking community studies the distance matrix defined by the no...
peer reviewedThis paper proposes a network proximity service based on the neighborhood models used ...
This thesis deals with delay prediction issue between nodes on the Internet. Accurate delay predicti...
Current internet more and more often faces the problem of the right definition of distance between t...
Trip Time (RTT) measurements to predict the N 2 RTTs among N nodes. Distance prediction can be appli...
PublishedKnowledge of end-to-end network distances is essential to many service-oriented application...
Coordinates-based distance prediction algorithms can improve the performance of many Internet applic...
Shortest-path distances on road networks have many applications such as finding nearest places of in...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Several emerging large-scale Internet applications such as Content Distribution Networks, and Peer-t...
Network distance, measured as round-trip latency be-tween hosts, is important for the performance of...
Abstract—The knowledge of end-to-end network distances is essential to many Internet applications. A...
Distance prediction algorithms use O(N) Round Trip Time (RTT) measurements to predict the N2 RTTs am...
Abstract—Topological distance estimation is the key to the efficiency in distributed systems and pee...
Network proximity and latency estimation is an important component in discovering and locating servi...
An active line of research in the networking community studies the distance matrix defined by the no...
peer reviewedThis paper proposes a network proximity service based on the neighborhood models used ...
This thesis deals with delay prediction issue between nodes on the Internet. Accurate delay predicti...
Current internet more and more often faces the problem of the right definition of distance between t...