[图书][B] Evolutionary learning: Advances in theories and algorithms
Many machine learning tasks involve solving complex optimization problems, such as
working on non-differentiable, non-continuous, and non-unique objective functions; in some …
working on non-differentiable, non-continuous, and non-unique objective functions; in some …
The adaptive complexity of maximizing a submodular function
E Balkanski, Y Singer - Proceedings of the 50th annual ACM SIGACT …, 2018 - dl.acm.org
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 …
Maximization of approximately submodular functions
We study the problem of maximizing a function that is approximately submodular under a
cardinality constraint. Approximate submodularity implicitly appears in a wide range of …
cardinality constraint. Approximate submodularity implicitly appears in a wide range of …
Near-optimal multi-agent learning for safe coverage control
M Prajapat, M Turchetta… - Advances in Neural …, 2022 - proceedings.neurips.cc
In multi-agent coverage control problems, agents navigate their environment to reach
locations that maximize the coverage of some density. In practice, the density is rarely …
locations that maximize the coverage of some density. In practice, the density is rarely …
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 …
Subset selection under noise
The problem of selecting the best $ k $-element subset from a universe is involved in many
applications. While previous studies assumed a noise-free environment or a noisy …
applications. While previous studies assumed a noise-free environment or a noisy …
Distributed Pareto optimization for large-scale noisy subset selection
C Qian - IEEE Transactions on Evolutionary Computation, 2019 - ieeexplore.ieee.org
Subset selection, aiming to select the best subset from a ground set with respect to some
objective function, is a fundamental problem with applications in many areas, such as …
objective function, is a fundamental problem with applications in many areas, such as …
Stochastic submodular maximization: The case of coverage functions
Stochastic optimization of continuous objectives is at the heart of modern machine learning.
However, many important problems are of discrete nature and often involve submodular …
However, many important problems are of discrete nature and often involve submodular …
Submodular optimization under noise
A Hassidim, Y Singer - Conference on Learning Theory, 2017 - proceedings.mlr.press
We consider the problem of maximizing a monotone submodular function under noise.
Since the 1970s there has been a great deal of work on optimization of submodular …
Since the 1970s there has been a great deal of work on optimization of submodular …
Practical parallel algorithms for submodular maximization subject to a knapsack constraint with nearly optimal adaptivity
Submodular maximization has wide applications in machine learning and data mining,
where massive datasets have brought the great need for designing efficient and …
where massive datasets have brought the great need for designing efficient and …