DBSCAN revisited, revisited: why and how you should (still) use DBSCAN
At SIGMOD 2015, an article was presented with the title “DBSCAN Revisited: Mis-Claim, Un-
Fixability, and Approximation” that won the conference's best paper award. In this technical …
Fixability, and Approximation” that won the conference's best paper award. In this technical …
K-means properties on six clustering benchmark datasets
This paper has two contributions. First, we introduce a clustering basic benchmark. Second,
we study the performance of k-means using this benchmark. Specifically, we measure how …
we study the performance of k-means using this benchmark. Specifically, we measure how …
Comparative analysis review of pioneering DBSCAN and successive density-based clustering algorithms
AA Bushra, G Yi - IEEE Access, 2021 - ieeexplore.ieee.org
The density-based spatial clustering of applications with noise (DBSCAN) is regarded as a
pioneering algorithm of the density-based clustering technique. It provides the ability to …
pioneering algorithm of the density-based clustering technique. It provides the ability to …
The role of hubness in clustering high-dimensional data
High-dimensional data arise naturally in many domains, and have regularly presented a
great challenge for traditional data mining techniques, both in terms of effectiveness and …
great challenge for traditional data mining techniques, both in terms of effectiveness and …
ELKI: A large open-source library for data analysis-ELKI Release 0.7. 5" Heidelberg"
This paper documents the release of the ELKI data mining framework, version 0.7. 5. ELKI is
an open source (AGPLv3) data mining software written in Java. The focus of ELKI is …
an open source (AGPLv3) data mining software written in Java. The focus of ELKI is …
Comparative study of data mining clustering algorithms
IA Venkatkumar, SJK Shardaben - … International Conference on …, 2016 - ieeexplore.ieee.org
In today's world, where we generate large amount of data, we can harness the benefits of
the hidden information ie patterns or correlations in these data. This information can be used …
the hidden information ie patterns or correlations in these data. This information can be used …
A self-adaptive density-based clustering algorithm for varying densities datasets with strong disturbance factor
Z Cai, Z Gu, K He - Data & Knowledge Engineering, 2024 - Elsevier
Clustering is a fundamental task in data mining, aiming to group similar objects together
based on their features or attributes. With the rapid increase in data analysis volume and the …
based on their features or attributes. With the rapid increase in data analysis volume and the …
A density-based spatial clustering approach for defining local indicators of drinking water distribution pipe breakage
The physical condition of American infrastructure systems has raised concerns that have
been addressed, in part, by studies addressing their condition assessment. Condition …
been addressed, in part, by studies addressing their condition assessment. Condition …
An overview on user profiling in online social networks
Abstract Advances in Online Social Networks is creating huge data day in and out providing
lot of opportunities to its users to express their interest and opinion. Due to the popularity …
lot of opportunities to its users to express their interest and opinion. Due to the popularity …
Adaptive density-based spatial clustering for massive data analysis
Z Cai, J Wang, K He - IEEE Access, 2020 - ieeexplore.ieee.org
Clustering is a classical research field due to its broad applications in data mining such as
emotion detection, event extraction and topic discovery. It aims to discover intrinsic patterns …
emotion detection, event extraction and topic discovery. It aims to discover intrinsic patterns …