Structures are present in almost everything around us. In most of the systems that we interact with, or the way we interact with them, some emergent structure can often be observed. A simple sentence is a sequence of words. A small classroom of interacting students can be depicted as a network with each student defining a node of it. The emergent structures, therefore, highlight the inter-relatedness of different entities within systems, where while each entity has a significant individuality, it is also a component of a larger structure. This structural information, combined with the individual knowledge, can assist the task of learning properties in such systems. On a social network, for instance, we can learn link related properties betw...
Network structure engineering aims to intervene in the network structure to improve a specific under...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....
A network graph describes the web of connections between entities in a system. Network graphs are a ...
Learning is one of the hallmarks of human intelligence. It marks a level of flexibility and adaptati...
By and large, learning from examples in the machine learning litera-ture refers to static data types...
We introduce an overview of methods for learning in structured domains covering foundational works d...
This paper demonstrates how to explore and visualize different types of structure in data, including...
Systems of concepts such as colors, animals, cities, and arti-facts are richly structured, and peopl...
This electronic version was submitted by the student author. The certified thesis is available in th...
© 2016 IEEE. Advances in social networking and communication technologies have witnessed an increasi...
2017-12-13The increasing growth of network data such as online social networks and linked documents ...
Some new tasks are trivial to learn, while others are essentially impossible; what determines how ea...
Scientists increasingly depend on machine learning algorithms to discover patterns in complex data. ...
Social media such as blogs, Facebook, Twitter, YouTube and Flickr enables people of all walks of lif...
Network structure engineering aims to intervene in the network structure to improve a specific under...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....
A network graph describes the web of connections between entities in a system. Network graphs are a ...
Learning is one of the hallmarks of human intelligence. It marks a level of flexibility and adaptati...
By and large, learning from examples in the machine learning litera-ture refers to static data types...
We introduce an overview of methods for learning in structured domains covering foundational works d...
This paper demonstrates how to explore and visualize different types of structure in data, including...
Systems of concepts such as colors, animals, cities, and arti-facts are richly structured, and peopl...
This electronic version was submitted by the student author. The certified thesis is available in th...
© 2016 IEEE. Advances in social networking and communication technologies have witnessed an increasi...
2017-12-13The increasing growth of network data such as online social networks and linked documents ...
Some new tasks are trivial to learn, while others are essentially impossible; what determines how ea...
Scientists increasingly depend on machine learning algorithms to discover patterns in complex data. ...
Social media such as blogs, Facebook, Twitter, YouTube and Flickr enables people of all walks of lif...
Network structure engineering aims to intervene in the network structure to improve a specific under...
Real-world data often have a complex structure that can be naturally represented with graphs or logi...
In classical machine learning, hand-designed features are used for learning a mapping from raw data....