Term proximity scoring models incorporate distance information of query term occurrences and are an established means in information retrieval to improve retrieval quality. The integration of such proximity scoring models into efficient query processing, however, has not been equally well studied. Existing methods make use of precomputed lists of documents where tuples of terms, usually pairs, occur together, usually incurring a huge index size compared to term-only indexes. This paper uses a joint framework for trading off index size and result quality. The framework provides optimization techniques for tuning precomputed indexes towards either maximal result quality or maximal query processing performance under controlled result quality, ...
Query expansion terms are often used to enhance original query formulations in document retrieval. S...
Full-text search engines are important tools for information retrieval. Term proximity is an importa...
Sophisticated ranking mechanisms make use of term dependency features in order to compute similarity...
Term proximity scoring models incorporate distance information of query term occurrences and are an ...
Term proximity scoring models incorporate distance information of query term occurrences and are an ...
Term proximity scoring is an established means in information retrieval for improving result quality...
n the presence of growing data, the need for efficient query processing under result quality and ind...
Scoring models that make use of proximity information usually improve result quality in text retriev...
In addition to purely occurrence-based relevance models, term proximity has been frequently used to ...
In the presence of growing data, the need for efficient query processing under result quality and in...
Abstract. This paper suggests the use of proximity measurement in combination with the Okapi probabi...
htmlabstractIn the information retrieval process, functions that rank documents according to their e...
The dominant retrieval models in information retrieval systems today are variants of TF×IDF, and typ...
The dominant retrieval models in information retrieval systems to-day are variants of TF×IDF, and ty...
We introduce a new, powerful class of text proximity queries: find an instance of a given "answer ty...
Query expansion terms are often used to enhance original query formulations in document retrieval. S...
Full-text search engines are important tools for information retrieval. Term proximity is an importa...
Sophisticated ranking mechanisms make use of term dependency features in order to compute similarity...
Term proximity scoring models incorporate distance information of query term occurrences and are an ...
Term proximity scoring models incorporate distance information of query term occurrences and are an ...
Term proximity scoring is an established means in information retrieval for improving result quality...
n the presence of growing data, the need for efficient query processing under result quality and ind...
Scoring models that make use of proximity information usually improve result quality in text retriev...
In addition to purely occurrence-based relevance models, term proximity has been frequently used to ...
In the presence of growing data, the need for efficient query processing under result quality and in...
Abstract. This paper suggests the use of proximity measurement in combination with the Okapi probabi...
htmlabstractIn the information retrieval process, functions that rank documents according to their e...
The dominant retrieval models in information retrieval systems today are variants of TF×IDF, and typ...
The dominant retrieval models in information retrieval systems to-day are variants of TF×IDF, and ty...
We introduce a new, powerful class of text proximity queries: find an instance of a given "answer ty...
Query expansion terms are often used to enhance original query formulations in document retrieval. S...
Full-text search engines are important tools for information retrieval. Term proximity is an importa...
Sophisticated ranking mechanisms make use of term dependency features in order to compute similarity...