We introduce a novel measure for quantifying the error in input predictions. The error is based on a minimum-cost hyperedge cover in a suitably defined hypergraph and provides a general template which we apply to online graph problems. The measure captures errors due to absent predicted requests as well as unpredicted actual requests; hence, predicted and actual inputs can be of arbitrary size. We achieve refined performance guarantees for previously studied network design problems in the online-list model, such as Steiner tree and facility location. Further, we initiate the study of learning-augmented algorithms for online routing problems, such as the online traveling salesperson problem and the online dial-a-ride problem, where (transpor...
Abstract We study online prediction where regret of the algorithm is measured against a benchmark de...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
Trip Time (RTT) measurements to predict the N 2 RTTs among N nodes. Distance prediction can be appli...
Exploring unknown environments is a fundamental task in many domains, e.g., robot navigation, networ...
This paper considers the recently popular beyond-worst-case algorithm analysis model which integrate...
A burgeoning paradigm in algorithm design is the field of algorithms with predictions, in which algo...
We study the problem of online prediction of a noisy labeling of a graph with the perceptron. We add...
We consider online similarity prediction problems over networked data. We begin by relat-ing this ta...
With an ever increasing demand on large scale data, difficulties exist in terms of processing and ut...
In this paper, we introduce and evaluate two different mechanisms for efficient online updating of u...
In online transductive graph prediction a learner is initially given an undirected graph G = (V,E) w...
We propose a new model for augmenting algorithms with predictions by requiring that they are formall...
The 24th International Conference on Algorithmic Learning Theory : ALT 2013 : October 6–9, 2013 : Si...
We study the Online Traveling Salesperson Problem (OLTSP) with predictions. In OLTSP, a sequence of ...
We continue our study of online prediction of the labelling of a graph. We show a fundamental limita...
Abstract We study online prediction where regret of the algorithm is measured against a benchmark de...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
Trip Time (RTT) measurements to predict the N 2 RTTs among N nodes. Distance prediction can be appli...
Exploring unknown environments is a fundamental task in many domains, e.g., robot navigation, networ...
This paper considers the recently popular beyond-worst-case algorithm analysis model which integrate...
A burgeoning paradigm in algorithm design is the field of algorithms with predictions, in which algo...
We study the problem of online prediction of a noisy labeling of a graph with the perceptron. We add...
We consider online similarity prediction problems over networked data. We begin by relat-ing this ta...
With an ever increasing demand on large scale data, difficulties exist in terms of processing and ut...
In this paper, we introduce and evaluate two different mechanisms for efficient online updating of u...
In online transductive graph prediction a learner is initially given an undirected graph G = (V,E) w...
We propose a new model for augmenting algorithms with predictions by requiring that they are formall...
The 24th International Conference on Algorithmic Learning Theory : ALT 2013 : October 6–9, 2013 : Si...
We study the Online Traveling Salesperson Problem (OLTSP) with predictions. In OLTSP, a sequence of ...
We continue our study of online prediction of the labelling of a graph. We show a fundamental limita...
Abstract We study online prediction where regret of the algorithm is measured against a benchmark de...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
Trip Time (RTT) measurements to predict the N 2 RTTs among N nodes. Distance prediction can be appli...