منابع مشابه
Bloofi: Multidimensional Bloom Filters
Bloom filters are probabilistic data structures commonly used for approximate membership problems in many areas of Computer Science (networking, distributed systems, databases, etc.). With the increase in data size and distribution of data, problems arise where a large number of Bloom filters are available, and all them need to be searched for potential matches. As an example, in a federated cl...
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It is well-known that IIR filters can have a much lower order than FIR filters with the same performance. On the downside is that the implementation of an IIR filter is an iterative procedure while that of an FIR filter is a one-shot computation. But in higher dimensions IIR filters are definitely more attractive. We offer a technique where the filter’s performance specifications, stability con...
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ژورنال
عنوان ژورنال: IEEE Transactions on Circuits and Systems
سال: 1983
ISSN: 0098-4094
DOI: 10.1109/tcs.1983.1085317