Inferring a graph from path frequency

Combinatorial Pattern Matching(2012)

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摘要
This paper considers the problem of inferring a graph from the number of occurrences of vertex-labeled paths, which is closely related to the pre-image problem for graphs: to reconstruct a graph from its feature space representation. It is shown that both exact and approximate versions of the problem can be solved in polynomial time in the size of an output graph by using dynamic programming algorithms if the graphs are trees whose maximum degree is bounded by a constant and the lengths of given paths and alphabet size are bounded by constants. On the other hand, it is shown that this problem is strongly NP-hard even for trees of bounded degree if the maximum length of paths is not bounded. The problem of inferring a string from the number of occurrences of fixed size substrings is also studied.
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关键词
maximum length,bounded degree,maximum degree,alphabet size,feature space representation,path frequency,pre-image problem,approximate version,output graph,fixed size substrings,dynamic programming algorithm,feature vector,kernel method
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