search engines to detect web spam accurately. In this paper we present 32 low cost quality
factors to classify spam and ham pages on real time basis. These features can be divided in
to three categories:(i) URL features,(ii) Content features, and (iii) Link features. We
developed a classifier using Resilient Back-propagation learning algorithm of neural
network and obtained good accuracy. This classifier can be applied to search engine results …