Keyword search (4,164 papers available)

"Validation" Keyword-tagged Publications:

Title Authors PubMed ID
1 Development and validation of the multidimensional Fear of Depression Recurrence Questionnaire (FoDRQ) Gumuchian ST; Boyle A; Kennedy G; Wong SF; Ellenbogen MA; 40391691
PSYCHOLOGY
2 Clustering and Interpretability of Residential Electricity Demand Profiles Kallel S; Amayri M; Bouguila N; 40218540
ENCS
3 Cultural Adaptation and Validation of the Athlete Fear-Avoidance Questionnaire in Arabic: Preliminary Analysis of Fear-Avoidance in ACL-Reconstructed Recreational Players Alanazi R; Kashoo FZ; Alrashdi N; Alanazi S; Shaik AR; Sirajudeen MS; Alenazi A; Nambi G; Dover G; Alanazi AD; 40190690
HKAP
4 Validation and Reliability of the Dyslexia Adult Checklist in Screening for Dyslexia Stark Z; Elalouf K; Soldano V; Franzen L; Johnson AP; 39660384
PSYCHOLOGY
5 Optimizing energy efficiency in brackish water reverse osmosis (BWRO): A comprehensive study on prioritizing critical operating parameters for specific energy consumption minimization Abkar L; Aghili Mehrizi A; Jafari M; Beck SE; Ghassemi A; Van Loosdrecht MCM; 38688362
ENCS
6 Introducing the Basic Psychological Needs Frustration in Second Language Scale (BPNF-L2): Examining its factor structure and effect on L2 motivation and achievement Alamer A; Morin AJS; Alrabai F; Alharfi A; 37696146
PSYCHOLOGY
7 Employee human resource management values: validation of a new concept and scale Drouin-Rousseau S; Fernet C; Austin S; Fabi B; Morin AJS; 37213377
CONCORDIA
8 Validating MEG source imaging of resting state oscillatory patterns with an intracranial EEG atlas Afnan J; von Ellenrieder N; Lina JM; Pellegrino G; Arcara G; Cai Z; Hedrich T; Abdallah C; Khajehpour H; Frauscher B; Gotman J; Grova C; 37149236
PERFORM
9 Financial well-being: Capturing an elusive construct with an optimized measure Aubrey M; Morin AJS; Fernet C; Carbonneau N; 36033044
PSYCHOLOGY
10 "Here's Some Money, Your Work's So Worthy?" A Brief Report on the Validation of the Functional Meaning of Cash Rewards Scale Thibault Landry A; Papachristopoulos K; Gradito Dubord MA; Forest J; 35444597
JMSB
11 Analysis of input set characteristics and variances on k-fold cross validation for a Recurrent Neural Network model on waste disposal rate estimation Vu HL; Ng KTW; Richter A; An C; 35287077
ENCS
12 Games researchers play: conceptual advancement versus validation strategies Dubois F; R Peres-Neto P; 35193771
BIOLOGY
13 Concurrent Validity of the Adult Eating Behavior Questionnaire in a Canadian Sample Cohen TR; Kakinami L; Plourde H; Hunot-Alexander C; Beeken RJ; 34925181
PERFORM
14 Validation of a Revised Version of the Center for Epidemiologic Depression Scale for Youth with Intellectual Disabilities (CESD-ID-R) Olivier E; Lacombe C; Morin AJS; Houle SA; Gagnon C; Tracey D; Craven RG; Maïano C; 34716523
PSYCHOLOGY
15 Toward a Comprehensive Assessment of Relationships with Teachers and Parents for Youth with Intellectual Disabilities Dubé C; Olivier E; Morin AJS; Tracey D; Craven RG; Maïano C; 34185237
PSYCHOLOGY
16 Monitoring the evolution of individuals' flood-related adaptive behaviors over time: two cross-sectional surveys conducted in the Province of Quebec, Canada. Valois P; Tessier M; Bouchard D; Talbot D; Morin AJS; Anctil F; Cloutier G; 33143677
PSYCHOLOGY
17 The Covert and Overt Reassurance Seeking Inventory (CORSI): Development, validation and psychometric analyses. Radomsky AS, Neal RL, Parrish CL, Lavoie SL, Schell SE 33046164
CONCORDIA
18 Qualitative threshold method validation and uncertainty evaluation: A theoretical framework and application to a 40 analytes liquid chromatography-tandem mass spectrometry method Camirand Lemyre F; Desharnais B; Laquerre J; Morel MA; Côté C; Mireault P; Skinner CD; 32476284
CHEMBIOCHEM

 

Title:Clustering and Interpretability of Residential Electricity Demand Profiles
Authors:Kallel SAmayri MBouguila N
Link:https://pubmed.ncbi.nlm.nih.gov/40218540/
DOI:10.3390/s25072026
Publication:Sensors (Basel, Switzerland)
Keywords:cluster validation indices (CVIs)clustering algorithmsdata characteristicsdecision tree interpretabilitydimensionality reductionelectricity load profilinginterpretable machine learning
PMID:40218540 Category: Date Added:2025-04-13
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, QC H3G 1M8, Canada.

Description:

Efficient energy management relies on uncovering meaningful consumption patterns from large-scale electricity load demand profiles. With the widespread adoption of sensor technologies such as smart meters and IoT-based monitoring systems, granular and real-time electricity usage data have become available, enabling deeper insights into consumption behaviors. Clustering is a widely used technique for this purpose, but previous studies have primarily focused on a limited set of algorithms, often treating clustering as a black-box approach without addressing interpretability. This study explores a wide number of clustering algorithms by comparing hard clustering algorithms (K-Means, K-Medoids) versus soft clustering techniques (Fuzzy C-Means, Gaussian Mixture Models) in segmenting electricity consumption profiles. The clustering performance is evaluated using five different clustering validation indices (CVIs), assessing intra-cluster cohesion and inter-cluster separation. The results show that soft clustering methods effectively capture inter-cluster characteristics, leading to better cluster separation, whereas intra-cluster characteristics exhibit similar behavior across all clustering approaches. This study assesses which CVIs provide reliable evaluations independent of clustering algorithm sensitivity. It provides a comprehensive analysis of the different CVIs' responses to changes in data characteristics, highlighting which indices remain robust and which are more susceptible to variations in cluster structures. Beyond evaluating clustering effectiveness, this study enhances interpretability by introducing two decision tree models, axis-aligned and sparse oblique decision trees, to generate human-readable rules for cluster assignments. While the axis-aligned tree provides a complete explanation of all clusters, the sparse oblique tree offers simpler, more interpretable rules, emphasizing a trade-off between full interpretability and rule complexity. This structured evaluation provides a framework for balancing transparency and complexity in clustering explanations, offering valuable insights for utility providers, policymakers, and researchers aiming to optimize both clustering performance and explainability in sensor-driven energy demand analysis.





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