We propose a new ranking paradigm for relational databases called Structured Value Ranking (SVR). SVR uses {\em structured data values} to score (rank) the results of keyword search queries over text columns. Our main contribution is a new family of inverted list indices and associated query algorithms that can support SVR efficiently in update-intensive databases, where the structured data values (and hence the scores of documents) change frequently. Our experimental results on real and synthetic data sets using BerkeleyDB show that we can support SVR efficiently in relational databases
Keyword search is an easy and potentially effective way to find information that is stored in relati...
Maintaining strict static score order of inverted lists is a heuristic used by search engines to imp...
Abstract—Information systems apply various techniques to rank query answers. Ranking queries (or top...
We propose a new ranking paradigm for relational databases called Structured Value Ranking (SVR). SV...
Traditionally, relational database systems have been designed for precise queries over structured da...
Rank-aware query processing has emerged as a key requirement in modern applications. In these applic...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
[[abstract]]Huge volumes of invaluable information are hidden behind web relational databases. They ...
This dissertation focuses on supporting ranking in relational database systems through a rank-aware ...
Keyword search in relational databases allows the user to search information without knowing databas...
The ubiquitous usage of databases for managing structured data, compounded with the expanded reach o...
Rank-aware query processing has emerged as a key requirement in modern applications. In these applic...
Traditionally, relational database systems have been designed for precise queries over structured ...
Keyword search is an easy and potentially effective way to find information that is stored in relati...
Maintaining strict static score order of inverted lists is a heuristic used by search engines to imp...
Abstract—Information systems apply various techniques to rank query answers. Ranking queries (or top...
We propose a new ranking paradigm for relational databases called Structured Value Ranking (SVR). SV...
Traditionally, relational database systems have been designed for precise queries over structured da...
Rank-aware query processing has emerged as a key requirement in modern applications. In these applic...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
This paper introduces RankSQL, a system that provides a systematic and principled framework to suppo...
[[abstract]]Huge volumes of invaluable information are hidden behind web relational databases. They ...
This dissertation focuses on supporting ranking in relational database systems through a rank-aware ...
Keyword search in relational databases allows the user to search information without knowing databas...
The ubiquitous usage of databases for managing structured data, compounded with the expanded reach o...
Rank-aware query processing has emerged as a key requirement in modern applications. In these applic...
Traditionally, relational database systems have been designed for precise queries over structured ...
Keyword search is an easy and potentially effective way to find information that is stored in relati...
Maintaining strict static score order of inverted lists is a heuristic used by search engines to imp...
Abstract—Information systems apply various techniques to rank query answers. Ranking queries (or top...