Automatic detection of pseudocodes in scholarly documents using machine learning

S Tuarob, S Bhatia, P Mitra… - 2013 12th international …, 2013 - ieeexplore.ieee.org
2013 12th international conference on document analysis and …, 2013ieeexplore.ieee.org
A significant number of scholarly articles in computer science and other disciplines contain
algorithms that provide concise descriptions for solving a wide variety of computational
problems. For example, Dijkstra's algorithm describes how to find the shortest paths
between two nodes in a graph. Automatic identification and extraction of these algorithms
from scholarly digital documents would enable automatic algorithm indexing, searching,
analysis and discovery. An algorithm search engine, which identifies pseudocodes in …
A significant number of scholarly articles in computer science and other disciplines contain algorithms that provide concise descriptions for solving a wide variety of computational problems. For example, Dijkstra's algorithm describes how to find the shortest paths between two nodes in a graph. Automatic identification and extraction of these algorithms from scholarly digital documents would enable automatic algorithm indexing, searching, analysis and discovery. An algorithm search engine, which identifies pseudocodes in scholarly documents and makes them searchable, has been implemented as a part of the CiteSeerX suite. Here, we illustrate the limitations of start-of-the-art rule based pseudocode detection approach, and present a novel set of machine learning based techniques that extend previous methods.
ieeexplore.ieee.org
Showing the best result for this search. See all results