№ files_lp_3_process_9_00778
File format: docx
Character count: 4242
File size: 108 KB
The document is an announcement for the 17th International Conference on Computational Collective Intelligence, specifically focusing on a special session about ensemble methods in machine learning.
Year:
2025
Location:
Ho Chi Minh City, Vietnam
Topic:
Computational Collective Intelligence, Machine Learning
Document Type:
Conference Announcement
Organizing Institution:
Wroclaw University of Science and Technology, University of New Hampshire
Authors:
Prof. Jan Kowalski, Prof. Adam Novak
Target Audience:
Researchers, Practitioners
Period:
November 12-15, 2025
Submission Deadline:
February 15, 2025
Acceptance Notification:
April 15, 2025
Camera-ready Paper Deadline:
May 1, 2025
Registration Deadline:
May 1, 2025
Price: 8 / 10 USD
The file will be delivered to the email address provided at checkout within 12 hours.
The file will be delivered to the email address provided at checkout within 12 hours.
Don’t have cryptocurrency yet?
You can still complete your purchase in a few minutes:- Buy Crypto in a trusted app (Coinbase, Kraken, Cash App or any similar service).
- In the app, tap Send.
- Select network, paste our wallet address.
- Send the exact amount shown above.
The final amount may vary slightly depending on the payment method.
The file will be sent to the email address provided at checkout within 24 hours.
The product description is provided for reference. Actual content and formatting may differ slightly.
Note:
Year
Subject:
Music
Document Type:
Lesson Plan
Target Audience:
Music teachers and instructors
Contextual Description:
Template for creating detailed music ensemble lesson plans, including objectives, assessments, materials, and special accommodations for different learners.
Year:
2025
Region / City:
New Orleans, Louisiana
Topic:
Music Education, Professional Development
Document Type:
Request Letter
Organization / Institution:
Louisiana Music Educators Association (LMEA)
Author:
[Insert Author Name]
Target Audience:
School Administrators, District Leaders, Colleagues, Music Educators
Period of Validity:
January 16–19, 2025
Approval Date:
[Insert Date of Approval]
Revision Date:
[Insert Date of Revision]
Year:
2022
Subject:
Machine Learning, Ensemble Methods, Unsupervised Learning
Document Type:
Educational Unit / Lecture Notes
Author:
Not specified
Target Audience:
Students and researchers in machine learning
Techniques Covered:
Model combination, Voting schemes, Bagging, Boosting, Stacking, K-means clustering, K-nearest neighbors, Gaussian mixture models, Expectation maximization
Scope:
Theoretical explanation of ensemble learning and unsupervised methods, including algorithm generation and combination strategies
Year:
2024
Region / City:
Baton Rouge, LA
Topic:
Piano Ensemble Festival
Document Type:
Rules and Procedures
Organ / Institution:
LMTA (Louisiana Music Teachers Association)
Author:
LMTA
Target Audience:
Students, Teachers
Period of Validity:
June 15–16, 2024
Approval Date:
Not specified
Amendment Date:
Not specified
Note:
Contextual Description
Document type:
Supplementary information
Related article:
An ensemble method utilising multiple thinking styles that boosts the wisdom of the inner crowd effect
Authors:
Itsuki Fujisaki; Lingxi Yu; Yuki Tsukamura; Kunhao Yang; Kazuhiro Ueda
Corresponding authors:
Itsuki Fujisaki; Kazuhiro Ueda
Email:
[email protected]
Experiments:
Experiment 1; Experiment 2
Methods:
Ensemble method; optimal weighting; averaging; mixed-effects analysis; ANOVA; parameter estimation; Bayesian modelling
Software:
R (brms package)
Variables:
Intuition; Deliberation; Dialectic; General crowd; Disagree-other; MSE; confidence; diversity; collective performance
Statistical parameters:
slope a; intercept b; prior variance 300; four chains; 5,000 samplings; 2,000 warm-up; seed 1; convergence criterion R < 1.1
Tables:
S1–S3
Figures:
S1–S9
References:
Fujisaki et al. (2023); Rauhut & Lorenz (2011)
Year:
2019
Location:
Kisumu County, Kenya
Type of organization:
Youth arts and theatre group
Registration number:
PAD/2508/05/2013
Focus areas:
Talent development, arts advocacy, community empowerment
Art forms:
Contemporary dance, traditional dance, modelling, stage theater, community theater, spoken word, narratives, stand-up comedy, radio dramas, film production, visual arts, event management
Vision:
Youth empowerment through arts and social integration
Mission:
Development programs using arts and media, education, social cohesion, women empowerment, democracy and governance, children rights
Target audience:
Youths and vulnerable communities in Kisumu and Western Kenya
Partnerships:
Kisumu Urban Apostolate Program (KUAP), Care Kenya International, Umande Trust, WAYANNAAC, Pal Omega CBO
Board structure:
Board of Directors, Managing Committee, Artistic Directors, Finance and Admin, Office Assistant/Secretary
Membership:
24 members (40% female, 60% male)
Notable achievements:
Participation in G-pange Gate Festival 2012, Ministry of Culture Arts Festival 2012, Kisumu Peer Educators Festival 2013, UNESCO-KNATCOM 2018
Educational initiatives:
School drama festivals, workshops in martial arts, aerobics, Zumba, yoga
Contact:
[email protected]
Note:
, P.O BOX 19450-40100, Kisumu, Kenya, 0701 739 992 / 0702 625 678
Year:
2024
Region / City:
Australia
Topic:
Music Performance
Document Type:
Subject Outline
Organization / Institution:
Australian Curriculum, Assessment and Reporting Authority (ACARA)
Author:
ACARA
Target Audience:
Teachers, Music Educators, Students
Period of Validity:
From 2024 onwards
Approval Date:
Not specified
Date of Modifications:
2024
Year:
2024
Region:
European Union
Theme:
Soil health and degradation
Document type:
Research figure/data description
Institution:
European Environment Agency (EEA)
Author:
Panagos et al.
Target audience:
Soil scientists, ecologists, environmental researchers
Methodology:
Random Forest ensemble modelling
Indicators analyzed:
Biotic indicators, soil degradation processes
Classification criteria:
Temporal Beta-Diversity Index, deviation from non-degradation reference
Data sources:
In-situ measurements, extracted environmental variables
Reference frameworks:
EU official soil health framework, EUSO standards
Year:
2024-2025
Location:
United Kingdom
Theme:
Music Education
Document Type:
Job Description
Organization:
SAYM (Saturday Young Musicians)
Position:
Ensemble Leader / Assistant
Qualifications:
Degree in Music or equivalent, relevant teaching experience
Target Audience:
Young musicians, music educators
Key Skills:
Instrumental performance, teaching, communication, teamwork, safeguarding knowledge
Requirements:
Eligible to work in the UK, enhanced DBS check, identity check, references
Responsibilities:
Leading and supporting ensembles, mentoring, planning rehearsals, supporting colleagues, safeguarding young musicians
Employment Type:
Part-time/contract
Year:
2025-2026
Institution:
Whitworth University
Type:
Faculty biographies
Discipline:
Music / Performing Arts
Audience:
Event organizers, concert attendees
Location:
Spokane, Washington, USA
Content reviewed by:
Whitworth Marketing & Communications Office
Document purpose:
Program use for music ensemble events
Contributors:
Philip Baldwin, Jared Hall, Xiaosha Lin, Scott Miller
Format:
Text for printed event programs
Contact:
Megan Jonas, Associate Director of Content, [email protected]
Year:
2026
Region / City:
Zhengzhou, China
Topic:
Optics, Plasmonics, Spectral Sensing
Document Type:
Research Paper
Organization / Institution:
Institute of Physics, Henan Academy of Sciences, Zhejiang Engineering Research Center of MEMS, Foshan University
Authors:
Qilin Zheng, Li Liang, Shunji Yang, Luyang Tong, Wenqiang Wang, Jibo Tang, Yu Zhang, Bintong Huang, Xiaobo He
Target Audience:
Researchers in optics and nanotechnology
Period of Validity:
Not specified
Approval Date:
Not specified
Modification Date:
Not specified
Year of Birth:
Not specified
Nationality:
United States
Security Clearance:
DoD Secret Clearance 1997–2012, 2014–present
Education:
PhD, Georgia Institute of Technology, Aerospace Engineering, 2008; MS, Auburn University, Mechanical Engineering, 1997; BS, Auburn University, Aerospace Engineering, 1994
Current Employer:
Leidos, Eglin AFB, FL
Current Position:
Senior Principal Engineer, Computational Fluid Dynamics
Previous Employers:
Auburn University, Raytheon Missile Systems, Georgia Institute of Technology, Lockheed Martin Aeronautics, General Electric Power Systems
Fields of Expertise:
Computational fluid dynamics, aerodynamic characterization, CFD code development, turbulence modeling, hybrid RANS/LES methods, discontinuous Galerkin methods
Professional Activities:
Teaching, graduate student advising, research in unsteady aerodynamics, aerodynamic table development, flight vehicle design analysis
Contact:
[email protected]
Note:
Year
Document Type:
Call for Papers
Thematic Focus:
AI Security and Safety
Subject Area:
Computational Social Systems
Scope:
Governance, Public Services, Healthcare, Finance, Communication Networks
Key Topics:
Cybersecurity, Data Protection, Adversarial Attacks, Ethical AI, Automated Decision-Making, Bias Mitigation, Autonomous Systems
Target Audience:
Researchers, Practitioners, Technologists
Special Issue:
Yes
Description:
Call for academic contributions addressing security threats and safety risks associated with the integration of artificial intelligence into computational social systems.
Year:
2026
Region / City:
Not specified
Topic:
Computer Science, Programming, Computational Thinking
Document Type:
Educational Text
Organization / Institution:
Not specified
Author:
K. Yue
Target Audience:
Students, Educators
Effective Period:
Not specified
Approval Date:
Not specified
Date of Changes:
Not specified
Year:
2025
Type of document:
Supplementary digital content
Topic:
Computational preoperative risk stratification in pancreatic surgery
Methods:
Radiomics, feature extraction, hierarchical clustering, machine learning models
Patient cohorts:
Dresden (Development), Heidelberg (External Test)
Imaging modality:
CT
Software/Tools:
TotalSegmentator v1.5.6, MIRP v2.0.0
Number of extracted features:
654
Cluster analysis:
Hierarchical agglomerative clustering
Comparison:
AutoFRS vs traditional FRS risk stratification
Content sections:
Patient selection, CT imaging characteristics, Totalsegmentator configuration, MIRP feature extraction, Feature clustering, Radiomics and clinical signatures, Evaluation of models, Web application, Glossary
Year:
2018
Region / City:
Hong Kong
Field:
Education, Statistics
Document Type:
Subject Description
Institution:
Hong Kong Community College
Author:
Hong Kong Community College
Target Audience:
Students
Period of Validity:
Academic year 2018-2019
Approval Date:
Not specified
Modification Date:
Not specified
Year:
2024
Region / City:
Online
Topic:
Verification, Validation, and Uncertainty Quantification in Computational Models
Document Type:
Request Letter
Organization / Institution:
TMS
Author:
Not specified
Target Audience:
Internal organizational stakeholders
Period of Action:
August 20–22, 2024
Approval Date:
Not specified
Revision Date:
Not specified
Year:
2021
Region / City:
Hatfield, United Kingdom
Topic:
Computational Fluid Dynamics, Nasal Delivery Devices, Fluid Mechanics
Document Type:
Research Article
Institution:
University of Hertfordshire, University College London, Bespak
Authors:
Hessam Rasooli Nia, Darragh Murnane, Michael Cook, Adam Gibbons, Sabrina Falloon
Target Audience:
Researchers, Engineers, Pharmaceutical Scientists
Period of Effectiveness:
N/A
Approval Date:
N/A
Modification Date:
N/A
Year:
2026
Region / City:
New York
Topic:
Gene regulatory networks, machine learning, experimental methods
Document Type:
Research Proposal
Organization / Institution:
NYU’s Courant Institute of Mathematical Science
Authors:
Chen HW, Bandyopadhyay S, Shasha DE, Birnbaum KD
Target Audience:
Researchers in systems biology, computational biology, and agriculture
Period of Validity:
N/A
Approval Date:
N/A
Date of Changes:
N/A
Context:
The document outlines a proposal for a combined experimental and computational approach to model gene regulatory networks, focusing on improving nitrogen assimilation processes in plants.