One of the open problems in machine learning is whether any set-family of VC-dimension d admits a sample compression scheme of size O(d). In this paper, we study this problem for balls in graphs. For balls of arbitrary radius r, we design proper sample compression schemes of size 4 for interval graphs, of size 6 for trees of cycles, and of size 22 for cube-free median graphs. We also design approximate sample compression schemes of size 2 for balls of ?-hyperbolic graphs
This paper presents a construction of a proper and stable labelled sample compression scheme of size...
Within the framework of pac-learning, we explore the learnability of concepts from samples using the...
Partial cubes (aka isometric subgraphs of hypercubes) are a fundamental class of metric graph theory...
International audienceOne of the open problems in machine learning is whether any set-family of VC-d...
One of the open problems in machine learning is whether any set-family of VC-dimension $d$ admits a ...
One of the open problems in machine learning is whether any set-family of VC-dimension d admits a s...
We show that the topes of a complex of oriented matroids (abbreviated COM) of VC-dimension d admit a...
We show that the topes of a complex of oriented matroids (abbreviated COM) of VC-dimension $d$ admit...
In today’s world, compression is a fundamental technique to let our computers deal in an efficient m...
We examine connections between combinatorial notions that arise in machine learning and topological ...
Abstract. Sample compression schemes are schemes for “encoding ” a set of examples in a small subset...
International audienceWe examine connections between combinatorial notions that arise in machine lea...
A long-standing sample compression conjecture asks to linearly bound the size of the optimal sample ...
International audienceWe examine connections between combinatorial notions that arise in machine lea...
Maximum concept classes of VC dimension d over n domain points have size � n � ≤d, and this is an up...
This paper presents a construction of a proper and stable labelled sample compression scheme of size...
Within the framework of pac-learning, we explore the learnability of concepts from samples using the...
Partial cubes (aka isometric subgraphs of hypercubes) are a fundamental class of metric graph theory...
International audienceOne of the open problems in machine learning is whether any set-family of VC-d...
One of the open problems in machine learning is whether any set-family of VC-dimension $d$ admits a ...
One of the open problems in machine learning is whether any set-family of VC-dimension d admits a s...
We show that the topes of a complex of oriented matroids (abbreviated COM) of VC-dimension d admit a...
We show that the topes of a complex of oriented matroids (abbreviated COM) of VC-dimension $d$ admit...
In today’s world, compression is a fundamental technique to let our computers deal in an efficient m...
We examine connections between combinatorial notions that arise in machine learning and topological ...
Abstract. Sample compression schemes are schemes for “encoding ” a set of examples in a small subset...
International audienceWe examine connections between combinatorial notions that arise in machine lea...
A long-standing sample compression conjecture asks to linearly bound the size of the optimal sample ...
International audienceWe examine connections between combinatorial notions that arise in machine lea...
Maximum concept classes of VC dimension d over n domain points have size � n � ≤d, and this is an up...
This paper presents a construction of a proper and stable labelled sample compression scheme of size...
Within the framework of pac-learning, we explore the learnability of concepts from samples using the...
Partial cubes (aka isometric subgraphs of hypercubes) are a fundamental class of metric graph theory...