Topological data analysis is a noble approach to extract meaningful information from high-dimensional data and is robust to noise. It is based on topology, which aims to study the geometric shape of data. In order to apply topological data analysis, an algorithm called mapper is adopted. The output from mapper is a simplicial complex that represents a set of connected clusters of data points. In this paper, we explore the feasibility of topological data analysis for mining social network data by addressing the problem of image popularity. We randomly crawl images from Instagram and analyze the effects of social context and image content on an image’s popularity using mapper. Mapper clusters the images using each feature, and the ratio of po...
International audienceThe clustering coefficient has been introduced to capture the social phenomena...
International audienceWe study here the clustering of directed social graphs. The clustering coeffic...
Graphs and Networks have been the most researched topics with applications ranging from theoretical ...
Topological data analysis is a noble approach to extract meaningful information from high-dimensiona...
For the past decade, the number of users on social networks has grown tremendously from thousands in...
Thesis (Ph.D.)--University of Washington, 2020Many real-world data sets can be viewed as a noisy sam...
Recent years have witnessed the emergence of a new class of social networks, which require us to mov...
The behavior of complex systems is often influenced by their structure. In mathematics, the field of...
This paper applies topological methods to study complex high dimensional data sets by extracting sha...
In Network Science node neighbourhoods, also called ego-centered networks have attracted large atten...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
Topological Data Analysis (TDA) combines topology and data analytics which offers a new perspective ...
Social network has gained remarkable attention in the last decade. Accessing social netw...
Abstract. The efficient identification of communities with common in-terests is a key consideration ...
International audienceThe clustering coefficient has been introduced to capture the social phenomena...
International audienceWe study here the clustering of directed social graphs. The clustering coeffic...
Graphs and Networks have been the most researched topics with applications ranging from theoretical ...
Topological data analysis is a noble approach to extract meaningful information from high-dimensiona...
For the past decade, the number of users on social networks has grown tremendously from thousands in...
Thesis (Ph.D.)--University of Washington, 2020Many real-world data sets can be viewed as a noisy sam...
Recent years have witnessed the emergence of a new class of social networks, which require us to mov...
The behavior of complex systems is often influenced by their structure. In mathematics, the field of...
This paper applies topological methods to study complex high dimensional data sets by extracting sha...
In Network Science node neighbourhoods, also called ego-centered networks have attracted large atten...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
Topological Data Analysis (TDA) combines topology and data analytics which offers a new perspective ...
Social network has gained remarkable attention in the last decade. Accessing social netw...
Abstract. The efficient identification of communities with common in-terests is a key consideration ...
International audienceThe clustering coefficient has been introduced to capture the social phenomena...
International audienceWe study here the clustering of directed social graphs. The clustering coeffic...
Graphs and Networks have been the most researched topics with applications ranging from theoretical ...