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Property matching is a biologically motivated problem where the task is to find those occurrences of an online pattern P in a string text T (of size n), such that the matched part in T satisfies some conceptual property. The property of a string is a set π of (possibly overlapping) intervals {(s1, f1), (s2, f2),⋯} corresponding to the part of T, and an occurrence of a pattern P at T[i..(i + |P| -...
Given a set D={d1, d2,..., dD} of D strings of total length n, our task is to report the "most relevant"strings for a given query pattern P. This involves somewhat more advanced query functionality than the usual pattern matching, as some notion of "most relevant" is involved. In information retrieval literature, this task is best achieved by using inverted indexes. However, inverted...
We introduce a new variant of the popular Burrows-Wheeler transform (BWT) called geometric Burrows-Wheeler transform (GBWT). Unlike BWT, which merely permutes the text, GBWT converts the text into a set of points in 2-dimensional geometry. Using this transform, we can answer to many open questions in compressed text indexing: (1) can compressed data structures be designed in external memory with similar...
The past few years have witnessed several exciting results on compressed representation of a string T that supports efficient pattern matching, and the space complexity has been reduced to |T| Hk (T) + o (|T| log sigma) bits, where Hk(T) denotes the kth-order empirical entropy of T, and sigma is the size of the alphabet. In this paper we study compressed representation for another classical problem...
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