Estimating entropy and entropy norm on data streams

A Chakrabarti, K Do Ba, S Muthukrishnan - Internet Mathematics, 2006 - Taylor & Francis
Internet Mathematics, 2006Taylor & Francis
We consider the problem of computing information-theoretic functions, such as entropy, on a
data stream, using sublinear space. Our first result deals with a measure we call the entropy
norm of an input stream: it is closely related to entropy but is structurally similar to the well-
studied notion of frequency moments. We give a polylogarithmic-space, one-pass algorithm
for estimating this norm under certain conditions on the input stream. We also prove a lower
bound that rules out such an algorithm if these conditions do not hold. Our second group of …
We consider the problem of computing information-theoretic functions, such as entropy, on a data stream, using sublinear space.
Our first result deals with a measure we call the entropy norm of an input stream: it is closely related to entropy but is structurally similar to the well-studied notion of frequency moments. We give a polylogarithmic-space, one-pass algorithm for estimating this norm under certain conditions on the input stream. We also prove a lower bound that rules out such an algorithm if these conditions do not hold.
Our second group of results is for estimating the empirical entropy of an input stream. We first present a sublinear-space, one-pass algorithm for this problem. For a stream of m items and a given real parameter α, our algorithm uses space Õ(m ) and provides an approximation of 1/α in the worst case and (1+ε) in "most" cases. We then present a two-pass, polylogarithmic-space, (1+ε)-approximation algorithm. All our algorithms are quite simple.
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