A review of android malware detection approaches based on machine learning
K Liu, S Xu, G Xu, M Zhang, D Sun, H Liu - IEEE access, 2020 - ieeexplore.ieee.org
Android applications are developing rapidly across the mobile ecosystem, but Android
malware is also emerging in an endless stream. Many researchers have studied the …
malware is also emerging in an endless stream. Many researchers have studied the …
Interestingness measures for data mining: A survey
L Geng, HJ Hamilton - ACM Computing Surveys (CSUR), 2006 - dl.acm.org
Interestingness measures play an important role in data mining, regardless of the kind of
patterns being mined. These measures are intended for selecting and ranking patterns …
patterns being mined. These measures are intended for selecting and ranking patterns …
[图书][B] Evaluating learning algorithms: a classification perspective
N Japkowicz, M Shah - 2011 - books.google.com
The field of machine learning has matured to the point where many sophisticated learning
approaches can be applied to practical applications. Thus it is of critical importance that …
approaches can be applied to practical applications. Thus it is of critical importance that …
Evaluation: from precision, recall and F-measure to ROC, informedness, markedness and correlation
DMW Powers - arXiv preprint arXiv:2010.16061, 2020 - arxiv.org
Commonly used evaluation measures including Recall, Precision, F-Measure and Rand
Accuracy are biased and should not be used without clear understanding of the biases, and …
Accuracy are biased and should not be used without clear understanding of the biases, and …
Performance evaluation in machine learning: the good, the bad, the ugly, and the way forward
P Flach - Proceedings of the AAAI conference on artificial …, 2019 - aaai.org
This paper gives an overview of some ways in which our understanding of performance
evaluation measures for machine-learned classifiers has improved over the last twenty …
evaluation measures for machine-learned classifiers has improved over the last twenty …
Predictive data mining in clinical medicine: current issues and guidelines
R Bellazzi, B Zupan - International journal of medical informatics, 2008 - Elsevier
BACKGROUND: The widespread availability of new computational methods and tools for
data analysis and predictive modeling requires medical informatics researchers and …
data analysis and predictive modeling requires medical informatics researchers and …
A taxonomy of privacy-preserving record linkage techniques
The process of identifying which records in two or more databases correspond to the same
entity is an important aspect of data quality activities such as data pre-processing and data …
entity is an important aspect of data quality activities such as data pre-processing and data …
An overview on subgroup discovery: foundations and applications
Subgroup discovery is a data mining technique which extracts interesting rules with respect
to a target variable. An important characteristic of this task is the combination of predictive …
to a target variable. An important characteristic of this task is the combination of predictive …
[PDF][PDF] Subgroup discovery with CN2-SD
This paper investigates how to adapt standard classification rule learning approaches to
subgroup discovery. The goal of subgroup discovery is to find rules describing subsets of the …
subgroup discovery. The goal of subgroup discovery is to find rules describing subsets of the …
Efficient convolution kernels for dependency and constituent syntactic trees
A Moschitti - European Conference on Machine Learning, 2006 - Springer
In this paper, we provide a study on the use of tree kernels to encode syntactic parsing
information in natural language learning. In particular, we propose a new convolution kernel …
information in natural language learning. In particular, we propose a new convolution kernel …