
Centrality and Diversity in Search
Description
The concepts of centrality and diversity are highly important in search algorithms, and play central roles in applications of artificial intelligence (AI), machine learning (ML), social networks, and pattern recognition. This work examines the significance of centrality and diversity in representation, regression, ranking, clustering, optimization, and classification.
The text is designed to be accessible to a broad readership. Requiring only a basic background in undergraduate-level mathematics, the work is suitable for senior undergraduate and graduate students, as well as researchers working in machine learning, data mining, social networks, and pattern recognition.
More details
Other editions
Additional editions

Persons
Prof. Murty's other publications include the Springer titles Support Vector Machines and Perceptrons , Compression Schemes for Mining Large Datasets , and Pattern Recognition: An Algorithmic Approach .