Mining Evolving Streams with Resource Adaptive Computation
نویسنده
چکیده
The problem of streaming data has gained importance in recent years because of advances in hardware technology. The ubiquitous presence of data streams in a number of practical domains has generated a lot of research in this area. Example applications include surveillance for terrorist attack, network monitoring for intrusion detection, and others. Problems such as data mining which have been widely studied for traditional data sets cannot be easily solved for the data stream domain. This is because the large volume of data arriving in a stream renders most algorithms to inefficient as most mining algorithms require multiple scans of data which is unrealistic for stream data. More importantly, the characteristics of the data stream can change over time and the evolving pattern needs to be captured. Furthermore, we also need to consider the problem of resource allocation in mining data streams. Due to the large volume and the high speed of streaming data, mining algorithms must cope with the effects of system overload. Thus, how to achieve optimum results under various resource constraints becomes a challenging task. In this talk, I’ll provide an overview, discuss the issues and focus on how to mine evolving data streams and perform resource adaptive computation. Proceedings of the Seventh IEEE International Symposium on Multimedia (ISM’05) 0-7695-2489-3/05 $20.00 © 2005 IEEE
منابع مشابه
Adaptive Stream Mining: Pattern Learning and Mining from Evolving Data Streams
Make more knowledge even in less time every day. You may not always spend your time and money to go abroad and get the experience and knowledge by yourself. Reading is a good alternative to do in getting this desirable knowledge and experience. You may gain many things from experiencing directly, but of course it will spend much money. So here, by reading adaptive stream mining pattern learning...
متن کاملResource-Aware Mining with Variable Granularities in Data Streams
For data stream applications, both approximation and adaptability are important issues for effective mining. We explore in this paper a fundamental problem that how the limited resources, e.g., memory space and computation power, can be well utilized to produce accurate estimates. Two important features for tracking mined patterns with properly utilized resources are examined. The first issue i...
متن کاملData Mining Meets Evolutionary Computation: A New Framework for Dynamic and Scalable Evolutionary Data Mining based on Non-Stationary Function Optimization
Data mining has recently attracted attention as a set of efficient techniques that can discover patterns from huge data. More recent advancements in collecting massive evolving data streams created a crucial need for dynamic data mining. In this paper, we present a genetic algorithm based on a new representation mechanism that allows several phenotypes to be simultaneously expressed to differen...
متن کاملA Distributed Mining Framework for Influence in Evolving Entities
Mining dynamic influence in evolving entities, which provides insights into the interaction and causal relations among entities, is an important and fundamental data mining task. Meanwhile, nowadays pervasive sensors in a variety of contexts give rise to the development of many distributed real-time computation systems intended for massive time series streams. In this paper, we focus on mining ...
متن کاملMulti-Dimensional Analysis of Data Streams Using Stream Cubes
Large volumes of dynamic stream data pose great challenges to its analysis. Besides its dynamic and transient behavior, stream data has another important characteristic: multi-dimensionality. Much of stream data resides at a multidimensional space and at rather low level of abstraction, whereas most analysts are interested in relatively high-level dynamic changes in some combination of dimensio...
متن کامل