Resource-aware Mining of Data Streams
نویسندگان
چکیده
Mining data streams has raised a number of research challenges for the data mining community. These challenges include the limitations of computational resources, especially because mining streams of data most likely be done on a mobile device with limited resources. Also due to the continuality of data streams, the algorithm should have only one pass or less over the incoming data records. In this article, our Algorithm Output Granularity (AOG) approach in mining data streams is discussed. AOG is a novel adaptable approach that can cope with the challenging inherent features of data streams. We also show the results for AOG based clustering in a resource constrained environment.
منابع مشابه
Resource-aware Knowledge Discovery in Data Streams
Mining data streams has raised a number of research challenges for the data mining community. These challenges include the limitations of computational resources, especially because mining streams of data most likely be done on a mobile device with limited resources. Also due to the continuality of data streams, the algorithm should have only one pass or less over the incoming data elements. In...
متن کاملAn Architecture for Context-Aware Adaptive Data Stream Mining
In resource-constrained devices, adaptation of data stream processing to variations of data rates, availability of resources and environment changes is crucial for consistency and continuity of running applications. Context-aware and resource-aware adaptation, as a new dimension of research in data stream mining, enhances and improves distributed data stream processing tasks. Context-awareness ...
متن کاملOpen Mobile Miner: A Toolkit for Building Situation-Aware Data Mining Applications
In organizational computing and information systems, data mining techniques have been widely used for analyzing customer behaviour and discovering hidden patterns. Mobile Data Mining is the process of intelligently analysing continuous data streams on mobile devices. The use of mobile data mining for realtime business intelligence applications can be greatly advantageous. Past research has show...
متن کاملA Wireless Data Stream Mining Model
The sensor networks, web click stream and astronomical applications generate a continuous flow of data streams. Most likely data streams are generated in a wireless environment. These data streams challenge our ability to store and process them in real-time with limited computing capabilities of the wireless environment. Querying and mining data streams have attracted attention in the past two ...
متن کاملMemory-Bounded High Utility Sequential Pattern Mining over Data Streams
Mining high utility sequential patterns (HUSPs) has emerged as an important topic in data mining. However, the existing studies on this topic focus on static data and do not consider streaming data. Streaming data are fast changing, continuously generated and unbounded in amount. Such data can easily exhaust computer resources (e.g., memory) unless proper resource-aware mining is performed. In ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- J. UCS
دوره 11 شماره
صفحات -
تاریخ انتشار 2005