An assumption with self-tuning histograms has been that they can "learn" the dataset if given enough training queries. We show that this is not the case with the current approaches. The quality of the histogram depends on the initial configuration. Starting with few good buckets can improve the efficiency of learning. Without this, the histogram is likely to stagnate, i.e. converge to a bad configuration and stop learning. We also present a probabilistic cost estimation model
Accurate selectivity estimations are essential for query optimization decisions where they are typic...
Summarization: There is a growing realization that modern database management systems (DBMSs) must b...
The problem of database query optimization consisting of the system choosing the most economical que...
Self-tuning histograms are a type of histograms very popular these days, as they allow the usage of ...
This paper aims to improve the accuracy of query result-size estimations in query optimizers by leve...
Histograms are used extensively for selectivity estimation and approximate query processing. Workloa...
We have solved the following problem using pattern classification techniques (PCT): given two histog...
We have solved the following problem using Pattern Classijication Techniques (PCT): Given two histog...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
Most RDBMSs maintain a set of histograms for estimating the selectivities of given queries. These se...
AbstractRecently, histograms have been considered as an effective way to produce quick approximate a...
Random sampling is a standard technique for constructing (approximate) histograms for query optimiza...
Histograms are summary structures of large datasets, which are mainly used for selectivity estimatio...
Obtaining the optimal query execution plan requires a selectivity estimation. The selectivity value ...
One of the most difficult tasks in modern day database management systems is information retrieval. ...
Accurate selectivity estimations are essential for query optimization decisions where they are typic...
Summarization: There is a growing realization that modern database management systems (DBMSs) must b...
The problem of database query optimization consisting of the system choosing the most economical que...
Self-tuning histograms are a type of histograms very popular these days, as they allow the usage of ...
This paper aims to improve the accuracy of query result-size estimations in query optimizers by leve...
Histograms are used extensively for selectivity estimation and approximate query processing. Workloa...
We have solved the following problem using pattern classification techniques (PCT): given two histog...
We have solved the following problem using Pattern Classijication Techniques (PCT): Given two histog...
Histograms have long been used to capture attribute value distribution statistics for query optimize...
Most RDBMSs maintain a set of histograms for estimating the selectivities of given queries. These se...
AbstractRecently, histograms have been considered as an effective way to produce quick approximate a...
Random sampling is a standard technique for constructing (approximate) histograms for query optimiza...
Histograms are summary structures of large datasets, which are mainly used for selectivity estimatio...
Obtaining the optimal query execution plan requires a selectivity estimation. The selectivity value ...
One of the most difficult tasks in modern day database management systems is information retrieval. ...
Accurate selectivity estimations are essential for query optimization decisions where they are typic...
Summarization: There is a growing realization that modern database management systems (DBMSs) must b...
The problem of database query optimization consisting of the system choosing the most economical que...