Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art
by
Peng, Yun
, Choi, Byron
, Xu, Jianliang
in
Algorithm Analysis and Problem Complexity
/ Artificial Intelligence
/ Bioinformatics
/ Carbon monoxide
/ Chemistry and Earth Sciences
/ Combinatorial analysis
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Database Management
/ Embedding
/ Graph representations
/ Graphical representations
/ Graphs
/ Machine learning
/ Optimization
/ Physics
/ Social networks
/ Statistics for Engineering
/ Systems and Data Security
2021
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art
by
Peng, Yun
, Choi, Byron
, Xu, Jianliang
in
Algorithm Analysis and Problem Complexity
/ Artificial Intelligence
/ Bioinformatics
/ Carbon monoxide
/ Chemistry and Earth Sciences
/ Combinatorial analysis
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Database Management
/ Embedding
/ Graph representations
/ Graphical representations
/ Graphs
/ Machine learning
/ Optimization
/ Physics
/ Social networks
/ Statistics for Engineering
/ Systems and Data Security
2021
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art
by
Peng, Yun
, Choi, Byron
, Xu, Jianliang
in
Algorithm Analysis and Problem Complexity
/ Artificial Intelligence
/ Bioinformatics
/ Carbon monoxide
/ Chemistry and Earth Sciences
/ Combinatorial analysis
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Database Management
/ Embedding
/ Graph representations
/ Graphical representations
/ Graphs
/ Machine learning
/ Optimization
/ Physics
/ Social networks
/ Statistics for Engineering
/ Systems and Data Security
2021
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art
Journal Article
Graph Learning for Combinatorial Optimization: A Survey of State-of-the-Art
2021
Request Book From Autostore
and Choose the Collection Method
Overview
Graphs have been widely used to represent complex data in many applications, such as e-commerce, social networks, and bioinformatics. Efficient and effective analysis of graph data is important for graph-based applications. However, most graph analysis tasks are combinatorial optimization (CO) problems, which are NP-hard. Recent studies have focused a lot on the potential of using machine learning (ML) to solve graph-based CO problems. Most recent methods follow the two-stage framework. The first stage is graph representation learning, which embeds the graphs into low-dimension vectors. The second stage uses machine learning to solve the CO problems using the embeddings of the graphs learned in the first stage. The works for the first stage can be classified into two categories, graph embedding methods and end-to-end learning methods. For graph embedding methods, the learning of the the embeddings of the graphs has its own objective, which may not rely on the CO problems to be solved. The CO problems are solved by independent downstream tasks. For end-to-end learning methods, the learning of the embeddings of the graphs does not have its own objective and is an intermediate step of the learning procedure of solving the CO problems. The works for the second stage can also be classified into two categories, non-autoregressive methods and autoregressive methods. Non-autoregressive methods predict a solution for a CO problem in one shot. A non-autoregressive method predicts a matrix that denotes the probability of each node/edge being a part of a solution of the CO problem. The solution can be computed from the matrix using search heuristics such as beam search. Autoregressive methods iteratively extend a partial solution step by step. At each step, an autoregressive method predicts a node/edge conditioned to current partial solution, which is used to its extension. In this survey, we provide a thorough overview of recent studies of the graph learning-based CO methods. The survey ends with several remarks on future research directions.
Publisher
Springer Singapore,Springer Nature B.V
This website uses cookies to ensure you get the best experience on our website.