Title
How to Improve Your Search Engine Ranking: Myths and Reality
Abstract
Search engines have greatly influenced the way people access information on the Internet, as such engines provide the preferred entry point to billions of pages on the Web. Therefore, highly ranked Web pages generally have higher visibility to people and pushing the ranking higher has become the top priority for Web masters. As a matter of fact, Search Engine Optimization (SEO) has became a sizeable business that attempts to improve their clients’ ranking. Still, the lack of ways to validate SEO’s methods has created numerous myths and fallacies associated with ranking algorithms. In this article, we focus on two ranking algorithms, Google’s and Bing’s, and design, implement, and evaluate a ranking system to systematically validate assumptions others have made about these popular ranking algorithms. We demonstrate that linear learning models, coupled with a recursive partitioning ranking scheme, are capable of predicting ranking results with high accuracy. As an example, we manage to correctly predict 7 out of the top 10 pages for 78% of evaluated keywords. Moreover, for content-only ranking, our system can correctly predict 9 or more pages out of the top 10 ones for 77% of search terms. We show how our ranking system can be used to reveal the relative importance of ranking features in a search engine’s ranking function, provide guidelines for SEOs and Web masters to optimize their Web pages, validate or disprove new ranking features, and evaluate search engine ranking results for possible ranking bias.
Year
DOI
Venue
2014
10.1145/2579990
TWEB
Keywords
Field
DocType
ranking function,ranking feature,popular ranking algorithm,possible ranking bias,content-only ranking,ranking result,ranking scheme,ranking system,ranking algorithm,new ranking feature,search engine ranking,search engine,search engine optimization
Learning to rank,Data mining,Ranking,Web page,Information retrieval,Ranking SVM,Computer science,Search engine optimization,Ranking (information retrieval),The Internet,Spamdexing
Journal
Volume
Issue
ISSN
8
2
1559-1131
Citations 
PageRank 
References 
6
0.49
11
Authors
4
Name
Order
Citations
PageRank
Ao-Jan Su118815.35
Y. Charlie Hu23357181.75
Aleksandar Kuzmanovic396071.99
Cheng-Kok Koh41540134.64