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Ali Amiri e881dd753b a 4 years ago
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DD_A.txt a 4 years ago
DD_graph_indicator.txt a 4 years ago
DD_graph_labels.txt a 4 years ago
DD_node_labels.txt a 4 years ago
README.txt a 4 years ago

README.txt

README for dataset DD


=== Usage ===

This folder contains the following comma separated text files
(replace DS by the name of the dataset):

n = total number of nodes
m = total number of edges
N = number of graphs

(1) DS_A.txt (m lines)
sparse (block diagonal) adjacency matrix for all graphs,
each line corresponds to (row, col) resp. (node_id, node_id)

(2) DS_graph_indicator.txt (n lines)
column vector of graph identifiers for all nodes of all graphs,
the value in the i-th line is the graph_id of the node with node_id i

(3) DS_graph_labels.txt (N lines)
class labels for all graphs in the dataset,
the value in the i-th line is the class label of the graph with graph_id i

(4) DS_node_labels.txt (n lines)
column vector of node labels,
the value in the i-th line corresponds to the node with node_id i

There are OPTIONAL files if the respective information is available:

(5) DS_edge_labels.txt (m lines; same size as DS_A_sparse.txt)
labels for the edges in DS_A_sparse.txt

(6) DS_edge_attributes.txt (m lines; same size as DS_A.txt)
attributes for the edges in DS_A.txt

(7) DS_node_attributes.txt (n lines)
matrix of node attributes,
the comma seperated values in the i-th line is the attribute vector of the node with node_id i

(8) DS_graph_attributes.txt (N lines)
regression values for all graphs in the dataset,
the value in the i-th line is the attribute of the graph with graph_id i


=== Description ===

D&D is a dataset of 1178 protein structures (Dobson and Doig, 2003). Each protein is
represented by a graph, in which the nodes are amino acids and two nodes are connected
by an edge if they are less than 6 Angstroms apart. The prediction task is to classify
the protein structures into enzymes and non-enzymes.


=== Previous Use of the Dataset ===

Neumann, M., Garnett R., Bauckhage Ch., Kersting K.: Propagation Kernels: Efficient Graph
Kernels from Propagated Information. Under review at MLJ.

Neumann, M., Patricia, N., Garnett, R., Kersting, K.: Efficient Graph Kernels by
Randomization. In: P.A. Flach, T.D. Bie, N. Cristianini (eds.) ECML/PKDD, Notes in
Computer Science, vol. 7523, pp. 378-393. Springer (2012).

Shervashidze, N., Schweitzer, P., van Leeuwen, E., Mehlhorn, K., Borgwardt, K.:
Weisfeiler-Lehman Graph Kernels. Journal of Machine Learning Research 12, 2539-2561 (2011)


=== References ===

P. D. Dobson and A. J. Doig. Distinguishing enzyme structures from non-enzymes without
alignments. J. Mol. Biol., 330(4):771–783, Jul 2003.