Combinatorial optimization (CO) layers in machine learning (ML) pipelines are a powerful tool to tackle data-driven decision tasks, but they come with two main challenges. First, the solution of a CO problem often behaves as a piecewise constant function of its objective parameters. Given that ML pipelines are typically trained using stochastic gradient descent, the absence of slope information is very detrimental. Second, standard ML losses do not work well in combinatorial settings. A growing body of research addresses these challenges through diverse methods. Unfortunately, the lack of well-maintained implementations slows down the adoption of CO layers.In this paper, building upon previous works, we introduce a probabilistic perspective...
In today's rapidly evolving technological landscape, the development and advancement of computationa...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
Creating impact in real-world settings requires artificial intelligence techniques to span the full ...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
In the first article we present a network based algorithm for probabilistic inference in an undirect...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We study dynamic decision making under uncertainty when, at each period, the decision maker faces a ...
Contemporary research in building optimization models and designing algorithms has become more data-...
This report is a brief exposition of some of the important links between machine learning and combin...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
AbstractThis article is a brief exposition of some of the important links between machine learning a...
In today's rapidly evolving technological landscape, the development and advancement of computationa...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
Creating impact in real-world settings requires artificial intelligence techniques to span the full ...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
In the first article we present a network based algorithm for probabilistic inference in an undirect...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
We study dynamic decision making under uncertainty when, at each period, the decision maker faces a ...
Contemporary research in building optimization models and designing algorithms has become more data-...
This report is a brief exposition of some of the important links between machine learning and combin...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
AbstractThis article is a brief exposition of some of the important links between machine learning a...
In today's rapidly evolving technological landscape, the development and advancement of computationa...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...
This thesis investigates the frontier between machine learning and combinatorial optimization, two a...