Similarity search is one of the most studied research fields in data mining. Given a query data point Q, how to find its closest neighbors efficiently and effectively has always been a challenging research topic. In this paper, we discuss continuous research on data analysis based on our previous work on similarity search problems, and present an approach to improving the scalability of the PanKNN algorithm [13]. This proposed approach can assist to improve the performance of existing data analysis technologies, such as data mining approaches in Bioinformatics
Scalable similarity search on images, documents, and user activities benefits generic search, data v...
For an increasing number of modern database applica-tions, efficient support of similarity search be...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
In this paper, we present continuous research on data analysis based on our previous work on similar...
This thesis studies the scalability of the similarity search problem in large-scale multidimensional...
As databases increasingly integrate different types of information such as time-series, multimedia a...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Metric databases are databases where a metric distance function is defined for pairs of database obj...
In this paper, we present continuous research on data analysis based on our previous work on similar...
Finding nearest neighbors in large multi-dimensional data has always been one of the research intere...
Similarity search is a crucial task in multimedia retrieval and data mining. Most existing work has ...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
Aggregate similarity search, a.k.a. aggregate nearest neighbor (Ann) query, finds many useful applic...
Research Doctorate - Doctor of Philosophy (PhD)This thesis presents techniques for accelerating simi...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
Scalable similarity search on images, documents, and user activities benefits generic search, data v...
For an increasing number of modern database applica-tions, efficient support of similarity search be...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
In this paper, we present continuous research on data analysis based on our previous work on similar...
This thesis studies the scalability of the similarity search problem in large-scale multidimensional...
As databases increasingly integrate different types of information such as time-series, multimedia a...
Similarity search problems in high-dimensional data arise in many areas of computer science such as ...
Metric databases are databases where a metric distance function is defined for pairs of database obj...
In this paper, we present continuous research on data analysis based on our previous work on similar...
Finding nearest neighbors in large multi-dimensional data has always been one of the research intere...
Similarity search is a crucial task in multimedia retrieval and data mining. Most existing work has ...
The nearest- or near-neighbor query problems arise in a large variety of database applications, usua...
Aggregate similarity search, a.k.a. aggregate nearest neighbor (Ann) query, finds many useful applic...
Research Doctorate - Doctor of Philosophy (PhD)This thesis presents techniques for accelerating simi...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
Scalable similarity search on images, documents, and user activities benefits generic search, data v...
For an increasing number of modern database applica-tions, efficient support of similarity search be...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...