AbstractWe define the problem of bounded similarity querying in time-series databases, which generalizes earlier notions of similarity querying. Given a (sub)sequence S, a query sequence Q, lower and upper bounds on shifting and scaling parameters, and a tolerance ϵ, S is considered boundedly similar to Q if S can be shifted and scaled within the specified bounds to produce a modified sequence S′ whose distance from Q is within ϵ. We use similarity transformation to formalize the notion of bounded similarity. We then describe a framework that supports the resulting set of queries; it is based on a fingerprint method that normalizes the data and saves the normalization parameters. For off-line data, we provide an indexing method with a singl...
Similarity search is a core module of many data analysis tasks including search by example classific...
Similarity search in time series data is required in many application fields. The most prominent wor...
) C. Faloutsos , H. V. Jagadish AT&T Bell Labs Murray Hill, NJ 07974 fchristos,jagg@research...
We study a set of linear transformations on the Fourier series representation of a sequence that can...
We study similarity queries for time series data where similarity is defined in terms of a set of li...
Abstract—We consider the problem of finding similar patterns in a time sequence. Typical application...
grantor: University of TorontoThe idea of posing queries in terms of similarity of objects...
Abstract. We propose an indexing method for time sequences for processing similarity queries. We use...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
We address the problem of similarity search in large time series databases. We introduce a novel ind...
We propose an indexing method for time sequences for processing similarity queries. We use the Discr...
. We propose an indexing method for time sequences for processing similarity queries. We use the Dis...
Abstract: In this paper, a method called MABI (moving average based indexing) is proposed to effect...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
In this paper, a method called MABI (moving average based indexing) is proposed to effectively deal ...
Similarity search is a core module of many data analysis tasks including search by example classific...
Similarity search in time series data is required in many application fields. The most prominent wor...
) C. Faloutsos , H. V. Jagadish AT&T Bell Labs Murray Hill, NJ 07974 fchristos,jagg@research...
We study a set of linear transformations on the Fourier series representation of a sequence that can...
We study similarity queries for time series data where similarity is defined in terms of a set of li...
Abstract—We consider the problem of finding similar patterns in a time sequence. Typical application...
grantor: University of TorontoThe idea of posing queries in terms of similarity of objects...
Abstract. We propose an indexing method for time sequences for processing similarity queries. We use...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
We address the problem of similarity search in large time series databases. We introduce a novel ind...
We propose an indexing method for time sequences for processing similarity queries. We use the Discr...
. We propose an indexing method for time sequences for processing similarity queries. We use the Dis...
Abstract: In this paper, a method called MABI (moving average based indexing) is proposed to effect...
Fast indexing in time sequence databases for similarity searching has attracted a lot of research re...
In this paper, a method called MABI (moving average based indexing) is proposed to effectively deal ...
Similarity search is a core module of many data analysis tasks including search by example classific...
Similarity search in time series data is required in many application fields. The most prominent wor...
) C. Faloutsos , H. V. Jagadish AT&T Bell Labs Murray Hill, NJ 07974 fchristos,jagg@research...