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Distributed submodular maximization: Identifying representative elements in massive data
Many large-scale machine learning problems (such as clustering, non-parametric learning,
kernel machines, etc.) require selecting, out of a massive data set, a manageable …
kernel machines, etc.) require selecting, out of a massive data set, a manageable …
Submodular streaming in all its glory: Tight approximation, minimum memory and low adaptive complexity
Streaming algorithms are generally judged by the quality of their solution, memory footprint,
and computational complexity. In this paper, we study the problem of maximizing a …
and computational complexity. In this paper, we study the problem of maximizing a …
Coresets meet EDCS: algorithms for matching and vertex cover on massive graphs
There is a rapidly growing need for scalable algorithms that solve classical graph problems,
such as maximum matching and minimum vertex cover, on massive graphs. For massive …
such as maximum matching and minimum vertex cover, on massive graphs. For massive …
Beyond 1/2-approximation for submodular maximization on massive data streams
Many tasks in machine learning and data mining, such as data diversification, non-
parametric learning, kernel machines, clustering etc., require extracting a small but …
parametric learning, kernel machines, clustering etc., require extracting a small but …
The adaptive complexity of maximizing a submodular function
In this paper we study the adaptive complexity of submodular optimization. Informally, the
adaptive complexity of a problem is the minimal number of sequential rounds required to …
adaptive complexity of a problem is the minimal number of sequential rounds required to …
Restricted strong convexity implies weak submodularity
We connect high-dimensional subset selection and submodular maximization. Our results
extend the work of Das and Kempe [In ICML (2011) 1057–1064] from the setting of linear …
extend the work of Das and Kempe [In ICML (2011) 1057–1064] from the setting of linear …
An exponential speedup in parallel running time for submodular maximization without loss in approximation
In this paper we study the adaptivity of submodular maximization. Adaptivity quantifies the
number of sequential rounds that an algorithm makes when function evaluations can be …
number of sequential rounds that an algorithm makes when function evaluations can be …
Streaming weak submodularity: Interpreting neural networks on the fly
In many machine learning applications, it is important to explain the predictions of a black-
box classifier. For example, why does a deep neural network assign an image to a particular …
box classifier. For example, why does a deep neural network assign an image to a particular …
The one-way communication complexity of submodular maximization with applications to streaming and robustness
We consider the classical problem of maximizing a monotone submodular function subject
to a cardinality constraint, which, due to its numerous applications, has recently been …
to a cardinality constraint, which, due to its numerous applications, has recently been …
Submodular maximization with nearly optimal approximation, adaptivity and query complexity
Submodular optimization generalizes many classic problems in combinatorial optimization
and has recently found a wide range of applications in machine learning (eg, feature …
and has recently found a wide range of applications in machine learning (eg, feature …