Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Distributed Loads: Problem Solving01:21

Distributed Loads: Problem Solving

1.2K
Beams are structural elements commonly employed in engineering applications requiring different load-carrying capacities. The first step in analyzing a beam under a distributed load is to simplify the problem by dividing the load into smaller regions, which allows one to consider each region separately and calculate the magnitude of the equivalent resultant load acting on each portion of the beam. The magnitude of the equivalent resultant load for each region can be determined by calculating...
1.2K
Application of Linearization and Approximation01:29

Application of Linearization and Approximation

129
A drone flying through complex terrain often relies on more than one sensing method to estimate small changes in altitude. Along with direct measurements, air pressure provides a useful indirect indicator of vertical movement. Atmospheric pressure decreases as altitude increases, and this relationship is commonly described using an exponential model. Although accurate, converting pressure measurements into altitude values requires calculations that are too complex to perform repeatedly during...
129
Cluster Sampling Method01:20

Cluster Sampling Method

15.4K
Appropriate sampling methods ensure that samples are drawn without bias and accurately represent the population. Because measuring the entire population in a study is not practical, researchers use samples to represent the population of interest.
To choose a cluster sample, divide the population into clusters (groups) and then randomly select some of the clusters. All the members from these clusters are in the cluster sample. For example, if you randomly sample four departments from your...
15.4K
Model Approaches for Pharmacokinetic Data: Distributed Parameter Models01:06

Model Approaches for Pharmacokinetic Data: Distributed Parameter Models

309
Pharmacokinetic models are mathematical constructs that represent and predict the time course of drug concentrations in the body, providing meaningful pharmacokinetic parameters. These models are categorized into compartment, physiological, and distributed parameter models.
The distributed parameter models are specifically designed to account for variations and differences in some drug classes. This model is particularly useful for assessing regional concentrations of anticancer or...
309
One-Compartment Open Model: Wagner-Nelson and Loo Riegelman Method for ka Estimation01:24

One-Compartment Open Model: Wagner-Nelson and Loo Riegelman Method for ka Estimation

1.4K
This lesson introduces two critical methods in pharmacokinetics, the Wagner-Nelson and Loo-Riegelman methods, used for estimating the absorption rate constant (ka) for drugs administered via non-intravenous routes. The Wagner-Nelson method relates ka to the plasma concentration derived from the slope of a semilog percent unabsorbed time plot. However, it is limited to drugs with one-compartment kinetics and can be impacted by factors like gastrointestinal motility or enzymatic degradation.
On...
1.4K
Distribution Reliability and Automation01:25

Distribution Reliability and Automation

558
Distribution reliability in electrical power systems is critical for ensuring an uninterrupted power supply to consumers at minimal cost. According to IEEE Standard Terms, reliability is the probability that a device will function without failure over a specified time period or amount of usage. For electric power distribution, this translates to maintaining continuous power supply and addressing customer concerns over power outages. Several indices, as defined by IEEE Standard 1366-2012, are...
558

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

A novel scoring model to predict massive hemorrhage during dilatation and curettage following focused ultrasound ablation surgery in patients with type 2 cesarean scar pregnancy.

International journal of hyperthermia : the official journal of European Society for Hyperthermic Oncology, North American Hyperthermia Group·2025
Same author

Disinfection efficacy and safety of 222-nm ultraviolet C compared with 254-nm ultraviolet C: systematic review and meta-analysis.

The Journal of hospital infection·2025
Same author

Enhancing lateral flow immunoassay performance for cardiac troponin I detection with pore-size tailored silica nanoparticles and smartphone-based "AdaptiScan" analysis.

Frontiers in bioengineering and biotechnology·2025
Same author

Effect of pulmonary rehabilitation on lung cancer surgery outcomes: a matched-case analysis.

Perioperative medicine (London, England)·2025
Same author

Strengthened Zinc Anode by Trace Natural Amino Acid β-Alanine in Aqueous Electrolyte Inspired by Synial Membrane: An Experimental Survey.

Langmuir : the ACS journal of surfaces and colloids·2025
Same author

Pathogen Detection in Spinal Infections: Next-Generation Sequencing Versus Conventional Microbiological Methods.

Current medical science·2025

Related Experiment Video

Updated: Mar 18, 2026

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model
07:15

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model

Published on: August 16, 2020

7.6K

A Distributed Learning Method for ℓ 1 -Regularized Kernel Machine over Wireless Sensor Networks.

Xinrong Ji1,2, Cuiqin Hou3, Yibin Hou4

  • 1Beijing Engineering Research Center for IOT Software and Systems, Beijing 100124, China. jixinrong@emails.bjut.edu.cn.

Sensors (Basel, Switzerland)
|July 5, 2016
PubMed
Summary

This study introduces a new distributed learning algorithm for kernel machines in wireless sensor networks (WSNs). The method significantly reduces communication costs and energy consumption by transmitting only sparse models between nodes.

Keywords:
distributed learningkernel machineskernel minimum mean squared error (KMSE)wireless sensor network (WSN)ℓ1 norm regularization (ℓ1-regularized)

Related Experiment Videos

Last Updated: Mar 18, 2026

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model
07:15

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model

Published on: August 16, 2020

7.6K

Area of Science:

  • Machine Learning
  • Wireless Sensor Networks
  • Distributed Systems

Background:

  • Centralized learning in wireless sensor networks (WSNs) incurs high communication and energy costs due to transmitting raw data to a central node.
  • Existing methods struggle to balance model accuracy with resource efficiency in WSNs.

Purpose of the Study:

  • To propose a novel distributed learning algorithm for ℓ 1 -regularized kernel minimum mean squared error (KMSE) machines.
  • To reduce communication costs and energy consumption in WSNs through in-network processing and sparse model transmission.

Main Methods:

  • Developed a distributed learning algorithm for ℓ 1 -regularized KMSE machines.
  • Implemented in-network processing and inter-node collaboration for sparse model exchange between single-hop neighbors.
  • Evaluated performance using prediction accuracy, model sparsity, communication cost, and iteration count on synthetic and real datasets.

Main Results:

  • The proposed algorithm achieves prediction accuracy comparable to batch learning methods.
  • Demonstrated significant improvements in model sparsity and communication cost reduction.
  • Showcased faster convergence with fewer iterations compared to existing approaches.
  • Validated advantages through experiments on a WSN test platform.

Conclusions:

  • The novel distributed learning algorithm effectively addresses the communication and energy challenges in WSNs.
  • The algorithm offers a superior trade-off between model accuracy, sparsity, and communication efficiency.
  • This approach is well-suited for resource-constrained environments like wireless sensor networks.