dear all, we cordially invite you to submit a manuscript to the following special issue
Special Issue: Methods and Applications for Anomaly Detection Journal of Computational Mathematics and Data Science (Elsevier) https://www.journals.elsevier.com/journal-of-computational-mathematics-and-d...
Submission Deadline: 31 July 2022 Manuscripts can be submitted continuously until the deadline. Once a paper is submitted, the review process will start immediately. Accepted papers will be published continuously in the journal. There are no publication fees until March 2022.
********* This Special Issue is focused on recent advances in Anomaly Detection (AD). AD is an important problem in many applications and it consists of establishing whether a given data deviates from nominal shape or form. The AD problem depends on the nature of input data (points, sequences, functions, graphs, images, objects of different nature), on the type of anomaly (point anomalies, contextual or behavioral anomalies or their combination), on the availability of labeled data for training/validation of the AD techniques (leading to unsupervised AD and supervised AD), and on the type of output of the AD (scores or label). Some of the topics of interest include (but are not limited to): Classification techniques Robust regression Robust PCA Robust signal processing Robust image processing Clustering techniques Information theory techniques Artificial Intelligence AD Application to any field
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Manuscript submission information:
Guest Editors: Annalisa Pascarella (IAC-CNR, Italy) Daniela De Canditiis (IAC-CNR, Italy)
The submission website for this journal is located at: https://www.editorialmanager.com/jcmds/default.aspx
To ensure that all manuscripts are correctly identified for inclusion into the special issue, it is important that authors select VSI: Anomaly Detection (Special Issue) when they reach the “Article Type” step in the submission process.
We look forward to hearing from you.
All the best, Annalisa Pascarella Daniela De Canditiis