Streaming is a model where an input graph is provided one edge at a time, instead of being able to inspect it at will. In this work, we take a parameterized approach by assuming a vertex cover of the graph is given, building on work of Bishnu et al. [COCOON 2020]. We show the further potency of combining this parameter with the Adjacency List streaming model to obtain results for vertex deletion problems. This includes kernels, parameterized algorithms, and lower bounds for the problems of Π -free Deletion, H-free Deletion, and the more specific forms of Cluster Vertex Deletion and Odd Cycle Transversal. We focus on the complexity in terms of the number of passes over the input stream, and the memory used. This leads to a pass/memory trade-...
With recent advances in storage technology, it is now possible to store the vast amounts of data gen...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Streaming is a model where an input graph is provided one edge at a time, instead of being able to i...
As graphs continue to grow in size, we seek ways to effectively process such data at scale. The mode...
As graphs continue to grow in size, we seek ways to effectively process such data at scale. The mode...
We initiate the investigation of the parameterized complexity of Diameter and Connectivity in the st...
We consider the Π-FREE DELETION problem parameterized by the size of a vertex cover, for a range of ...
We initiate the first systematic study of the NP-hard CLUSTER VERTEX DELETION (CVD) problem (unweigh...
Over the last few years, there has been considerable amount of study and work on developing algorith...
In the weighted Cluster Deletion problem we are given a graph with non-negative integral edge weight...
We consider the Π-FREE DELETION problem parameterized by the size of a vertex cover, for a range of ...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We present efficient fixed-parameter algorithms for the NP-complete edge modification problems Clust...
Abstract. Vertex deletion problems are at the heart of parameterized complexity. For a graph class F...
With recent advances in storage technology, it is now possible to store the vast amounts of data gen...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Streaming is a model where an input graph is provided one edge at a time, instead of being able to i...
As graphs continue to grow in size, we seek ways to effectively process such data at scale. The mode...
As graphs continue to grow in size, we seek ways to effectively process such data at scale. The mode...
We initiate the investigation of the parameterized complexity of Diameter and Connectivity in the st...
We consider the Π-FREE DELETION problem parameterized by the size of a vertex cover, for a range of ...
We initiate the first systematic study of the NP-hard CLUSTER VERTEX DELETION (CVD) problem (unweigh...
Over the last few years, there has been considerable amount of study and work on developing algorith...
In the weighted Cluster Deletion problem we are given a graph with non-negative integral edge weight...
We consider the Π-FREE DELETION problem parameterized by the size of a vertex cover, for a range of ...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We present efficient fixed-parameter algorithms for the NP-complete edge modification problems Clust...
Abstract. Vertex deletion problems are at the heart of parameterized complexity. For a graph class F...
With recent advances in storage technology, it is now possible to store the vast amounts of data gen...
Massive graphs arise in a many scenarios, for example, traffic data analysis in large networks, larg...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...