Life-logging video streams, financial time series, and Twitter tweets are a few examples of high-dimensional signals over practically unbounded time. We consider the problem of computing optimal segmentation of such signals by k-piecewise linear function, using only one pass over the data by maintaining a coreset for the signal. The coreset enables fast further analysis such as automatic summarization and analysis of such signals. A coreset (core-set) is a compact representation of the data seen so far, which approximates the data well for a specific task -- in our case, segmentation of the stream. We show that, perhaps surprisingly, the segmentation problem admits coresets of cardinality only linear in the number of segments k, independent...
International audiencePiecewise signals appear in many application fields. Here, we propose...
In the k-center problem for streaming points in d-dimensional metric space, input points are given i...
Massive data sets are increasingly important in a wide range of applications, including observationa...
Thesis: Ph. D. in Computer Science and Engineering, Massachusetts Institute of Technology, Departmen...
This thesis studies clustering problems on data streams, specifically with applications to metric sp...
We present algorithms for simplifying and clustering patterns from sensors such as GPS, LiDAR, and o...
The wide availability of networked sensors such as GPS and cameras is enabling the creation sensor n...
We define a class of algorithms for constructing coresets of (geometric) data sets, and show that al...
The k-means problem seeks a clustering that minimizes the sum of squared errors cost function: For i...
Many applications such as financial transactions data, customer click stream continuously generates\...
We present a new streaming algorithm for maintaining an ε-kernel of a point set in Rd using O((1/ε(d...
We study clustering under the data stream model of computation where: given a sequence of points, th...
© Vladimir Braverman, Dan Feldman, Harry Lang, and Daniela Rus. We introduce a new method of maintai...
A data stream is a transiently observed sequence of data elements that arrive unordered, with repeti...
A k-core of a graph is a maximal connected subgraph in which ev-ery vertex is connected to at least ...
International audiencePiecewise signals appear in many application fields. Here, we propose...
In the k-center problem for streaming points in d-dimensional metric space, input points are given i...
Massive data sets are increasingly important in a wide range of applications, including observationa...
Thesis: Ph. D. in Computer Science and Engineering, Massachusetts Institute of Technology, Departmen...
This thesis studies clustering problems on data streams, specifically with applications to metric sp...
We present algorithms for simplifying and clustering patterns from sensors such as GPS, LiDAR, and o...
The wide availability of networked sensors such as GPS and cameras is enabling the creation sensor n...
We define a class of algorithms for constructing coresets of (geometric) data sets, and show that al...
The k-means problem seeks a clustering that minimizes the sum of squared errors cost function: For i...
Many applications such as financial transactions data, customer click stream continuously generates\...
We present a new streaming algorithm for maintaining an ε-kernel of a point set in Rd using O((1/ε(d...
We study clustering under the data stream model of computation where: given a sequence of points, th...
© Vladimir Braverman, Dan Feldman, Harry Lang, and Daniela Rus. We introduce a new method of maintai...
A data stream is a transiently observed sequence of data elements that arrive unordered, with repeti...
A k-core of a graph is a maximal connected subgraph in which ev-ery vertex is connected to at least ...
International audiencePiecewise signals appear in many application fields. Here, we propose...
In the k-center problem for streaming points in d-dimensional metric space, input points are given i...
Massive data sets are increasingly important in a wide range of applications, including observationa...