1 |
Network event detection with entropy measuresEimann, Raimund E. A. January 2008 (has links)
Information measures may be used to estimate the amount of information emitted by discrete information sources. Network streams are an example for such discrete information sources. This thesis investigates the use of information measures for the detection of events in network streams. Starting with the fundamental entropy and complexity measures proposed by Shannon and Kolmogorov, it reviews a range of candidate information measures for network event detection, including algorithms from the Lempel-Ziv family and a relative newcomer, the T-entropy. Using network trace data from the University of Auckland, the thesis demonstrates experimentally that these measures are in principle suitable for the detection of a wide range of network events. Several key parameters influence the detectability of network events with information measures. These include the amount of data considered in each traffic sample and the choice of observables. Among others, a study of the entropy behaviour of individual observables in event and non-event scenarios investigates the optimisation of these parameters. The thesis also examines the impact of some of the detected events on different information measures. This motivates a discussion on the sensitivity of various measures. A set of experiments demonstrating multi-dimensional network event classification with multiple observables and multiple information measures concludes the thesis.
|
2 |
Network event detection with entropy measuresEimann, Raimund E. A. January 2008 (has links)
Information measures may be used to estimate the amount of information emitted by discrete information sources. Network streams are an example for such discrete information sources. This thesis investigates the use of information measures for the detection of events in network streams. Starting with the fundamental entropy and complexity measures proposed by Shannon and Kolmogorov, it reviews a range of candidate information measures for network event detection, including algorithms from the Lempel-Ziv family and a relative newcomer, the T-entropy. Using network trace data from the University of Auckland, the thesis demonstrates experimentally that these measures are in principle suitable for the detection of a wide range of network events. Several key parameters influence the detectability of network events with information measures. These include the amount of data considered in each traffic sample and the choice of observables. Among others, a study of the entropy behaviour of individual observables in event and non-event scenarios investigates the optimisation of these parameters. The thesis also examines the impact of some of the detected events on different information measures. This motivates a discussion on the sensitivity of various measures. A set of experiments demonstrating multi-dimensional network event classification with multiple observables and multiple information measures concludes the thesis.
|
3 |
Network event detection with entropy measuresEimann, Raimund E. A. January 2008 (has links)
Information measures may be used to estimate the amount of information emitted by discrete information sources. Network streams are an example for such discrete information sources. This thesis investigates the use of information measures for the detection of events in network streams. Starting with the fundamental entropy and complexity measures proposed by Shannon and Kolmogorov, it reviews a range of candidate information measures for network event detection, including algorithms from the Lempel-Ziv family and a relative newcomer, the T-entropy. Using network trace data from the University of Auckland, the thesis demonstrates experimentally that these measures are in principle suitable for the detection of a wide range of network events. Several key parameters influence the detectability of network events with information measures. These include the amount of data considered in each traffic sample and the choice of observables. Among others, a study of the entropy behaviour of individual observables in event and non-event scenarios investigates the optimisation of these parameters. The thesis also examines the impact of some of the detected events on different information measures. This motivates a discussion on the sensitivity of various measures. A set of experiments demonstrating multi-dimensional network event classification with multiple observables and multiple information measures concludes the thesis.
|
4 |
Network event detection with entropy measuresEimann, Raimund E. A. January 2008 (has links)
Information measures may be used to estimate the amount of information emitted by discrete information sources. Network streams are an example for such discrete information sources. This thesis investigates the use of information measures for the detection of events in network streams. Starting with the fundamental entropy and complexity measures proposed by Shannon and Kolmogorov, it reviews a range of candidate information measures for network event detection, including algorithms from the Lempel-Ziv family and a relative newcomer, the T-entropy. Using network trace data from the University of Auckland, the thesis demonstrates experimentally that these measures are in principle suitable for the detection of a wide range of network events. Several key parameters influence the detectability of network events with information measures. These include the amount of data considered in each traffic sample and the choice of observables. Among others, a study of the entropy behaviour of individual observables in event and non-event scenarios investigates the optimisation of these parameters. The thesis also examines the impact of some of the detected events on different information measures. This motivates a discussion on the sensitivity of various measures. A set of experiments demonstrating multi-dimensional network event classification with multiple observables and multiple information measures concludes the thesis.
|
5 |
Entanglement swelling in polymer glasses: Chain length dependence on participation in network eventsMcGraw, Joshua January 2008 (has links)
<p> When a polymer system is strained below its glass transition temperature, T9 , deformed regions called crazes may be formed that have a characteristic extension ratio, λ. Examining the regions of deformed material, which are almost visible to the naked eye, and measuring λ with the use of atomic force microscopy gives information about the space between entanglements along a polymer chain, which is a truly molecular quantity. In this work we present the results of experiments in which entanglements in high molecular weight polystyrene (PS) samples have effectively been swelled by diluting the network with low molecular weight PS. We find that these experiments not only tell us how the molecular weight of a polymer can affect its contribution to the polymer network, but also give an entirely new method of determining the entanglement molecular weight, Me, of a polymer system. </p> / Thesis / Master of Science (MSc)
|
Page generated in 0.0472 seconds