The NOESIS Network-Oriented Exploration, Simulation, and Induction System
Martínez, Víctor, Berzal, Fernando, Cubero, Juan-Carlos
–arXiv.org Artificial Intelligence
Data mining techniques are intended to extract information from large volumes of data (Tan et al., 2006). Data mining includes tasks such as classification, regression, clustering, or anomaly detection, among others. Traditional data mining techniques are typically applied to tabulated data. Novel techniques have also been devised for semi-structured or structured data, since exploiting the relationships among instances from a dataset leads to new research and development opportunities (Getoor and Diehl, 2005). For example, network data mining has been used to predict previously unknown protein interactions in protein-protein interaction networks (Martínez et al., 2014). It has also been used to study and predict future author collaborations and tendencies in co-authorship networks (Pavlov and Ichise, 2007). Different network mining techniques are used by popular internet search engines to rank the most relevant websites (Page et al., 1999). These are only some examples of the large number of applications of network data mining. There are many software tools that facilitate the analysis of networked data.
arXiv.org Artificial Intelligence
Jun-23-2017
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