DELTA@KDD - Deadline Extension - [Scopus Indexed] - Workshop on Discovering Drift Phenomena in Evolving Landscape (DELTA 2024)

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Bardh Prenkaj

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May 23, 2024, 10:02:14 AMMay 23
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Call For Papers

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Workshop on Discovering Drift Phenomena in Evolving Landscape (DELTA 2024) 

to be held as part of the ACM SIGKDD International Conference on 

Knowledge Discovery and Data Mining (KDD 2024)

Workshop adjunct proceedings published by Springer-Verlag: 

Date: August  25th, 2024 - Barcelona, Catalonia (Spain) 

Web: https://aiimlab.org/short/DELTA_KDD_2024.html

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Important Dates

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Paper Submissions: May 28th, 2024 June 11st, 2024

Notifications: June 28th, 2024

Camera-Ready Contributions: July 2nd, 2024

Workshop: August 26th,2024

All deadlines are 11:59 pm Pacific Time

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Workshop Aims and Scope 

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In today’s rapidly evolving landscape, integrating automated systems into
daily tasks are the primary objectives for both industry and
academia. However, a challenge arises as these systems often struggle to adapt
to the continuous evolution of the world. Despite recent attention on the term
‘distribution drift’ to describe this continuous evolution. This overarching term  conflates
data drift and concept drift lead to misunderstanding in research and practitioner communities.

To bridge the gap, the DELTA workshop fosters collaboration
between academia and industry to clarify evolving landscape challenges and
develop practical solutions. We invite authors to submit unpublished,
original papers addressing the complexities faced by current state-of-the-art
techniques in detecting, predicting, and analyzing drift phenomena in real-world domains.

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Workshop Keywords

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Concept drift · Data drift · Hybrid drift · Data Streaming · Adaptive Systems · Evolving Systems

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Workshop Topics

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DELTA welcomes research and perspective contributions on all topics related to 
drift in evolving landscapes across domains (e.g., finance, business, basic
sciences, construction computational advertising, IoT, etc.) and independent of
data types (e.g., networks, tabular, unstructured, graphs, logs, spatiotemporal,
multimedia, time series, genomic sequences, and streaming data.):

  • Online and Incremental Learning

  • (Self-)Adaptive Systems

  • Human-in-the-Loop Learning

  • Uncertainty Quantification for Drift Learning

  • Drift Detection, Prediction, and Analysis

  • Process Mining for evolving environments

  • Process Drift Analysis

  • Drift Explanation

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Submission and Publication

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All submissions must be written in English and submitted electronically in a PDF format,
through the CMT submission system: https://cmt3.research.microsoft.com/DELTA2024 

Submissions must follow  the guidelines of the Communications in Computer and Information Science (CCIS) series by Springer-Verlag here found here :
https://www.springer.com/gp/computer-science/lncs/conference-proceedings-guidelines. The submission must also be anonymized; authors must omit their names and affiliations from submissions and avoid obvious identifying statements (e.g., citations to the author’s own prior work should be made in the third person). Finally, the submission must not be currently under review at another publication venue. Failure to adhere to policies will result in desk rejection. 


We strongly recommend using the LaTeX CCIS template and providing paper code and data in an Anonymous GitHub repository (https://anonymous.4open.science/).

We encourage three types of submissions (reviewers will comment on whether the size is appropriate for each contribution):

Full papers (up to 12 pages) should concern the state of the art and state the proposal's contribution in the application domain, even if they present preliminary results.
In particular, research papers should describe the methodology in detail, experiments should be repeatable, and approaches should be compared with those in the literature.

Reproducibility/Replicability papers (up to 12 pages) should repeat prior experiments using the original source code and datasets to show how, why, and when the methods work or not (replicability papers) or should repeat prior experiments, preferably using the original source code in new contexts (e.g., different domains and datasets, different evaluation and metrics) to generalize further and validate or not previous work (reproducibility papers).

Short or position papers (up to 6 pages) should introduce new points of view on the workshop topics or summarize a group's experience in the field. Practice and experience reports must detail real-world scenarios in which drifts are managed.

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Registration and Presentation Policy

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The workshop will be held in person. Each accepted workshop paper must be accompanied
by at least one distinct full author registration, completed by the early registration date cut-off.
Each accepted workshop paper must be presented in person.

The Main Conference organization team will manage the registration: https://kdd2024.kdd.org/registration/

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Workshop Chairs

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Marco Piangerelli

University of Camerino, Camerino (Italy)

Email: marco.pi...@unicam.it 

Bardh Prenkaj

Sapienza University of Rome (Italy)

Email: pre...@di.uniroma1.it 

Ylenia Rotalinti

Brunel University London, London (UK)

Email: ylenia.r...@mhra.gov.uk 

Ananya Joshi

Carnegie Mellon University, Pittsburgh (USA)

Email: aaj...@andrew.cmu.edu  

Giovanni Stilo

University of L’Aquila, L’Aquila (Italy)

Email: giovann...@univaq.it 

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Contacts

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For general inquiries about the workshop, please email marco.pi...@unicam.it

pre...@di.uniroma1.it,  ylenia.r...@mhra.gov.uk, aaj...@andrew.cmu.edu

and giovann...@univaq.it.


Bardh Prenkaj

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May 31, 2024, 12:39:01 PMMay 31
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