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AHaH computing-from metastable switches to attractors to machine learningCluster analysis of activity-time series in motor learningSpatial-orientation priming impedes rather than facilitates the spontaneous control of hand-retraction speeds in patients with Parkinson's diseaseMultiple routes and milestones in the folding of HIV-1 protease monomerNumerical simulation of the environmental impact of hydraulic fracturing of tight/shale gas reservoirs on near-surface groundwater: Background, base cases, shallow reservoirs, short-term gas, and water transportSeeding and harvest: a framework for unsupervised feature selection problemsAssessment of renal function by the stable oxygen and hydrogen isotopes in human blood plasmaComparison of realistic and idealized breathing patterns in computational models of airflow and vapor dosimetry in the rodent upper respiratory tractFrom loquacious to reticent: understanding patient health information communication to guide consumer health IT design.Formulation of probabilistic models of protein structure in atomic detail using the reference ratio method.Adaptive Energy-Efficient Target Detection Based on Mobile Wireless Sensor Networks.Towards the Automatic Classification of Avian Flight Calls for Bioacoustic Monitoring.Bayesian inference of protein structure from chemical shift data.Scalable analysis of Big pathology image data cohorts using efficient methods and high-performance computing strategies.A Split-and-Merge-Based Uterine Fibroid Ultrasound Image Segmentation Method in HIFU Therapy.Spectrally shaped DP-16QAM super-channel transmission with multi-channel digital back-propagationPHAISTOS: a framework for Markov chain Monte Carlo simulation and inference of protein structure.Ventilation-based segmentation of the lungs using hyperpolarized (3)He MRI.Data mining of solubility parameters for computational prediction of drug-excipient miscibility.Stereotypic wheel running decreases cortical activity in miceMorphological Neuron Classification Using Machine LearningA review of ensemble methods for de novo motif discovery in ChIP-Seq data.Fully automatic and nonparametric quantification of adipose tissue in fat-water separation MR imaging.A rough-and-ready cluster-based approach for extracting finite-time coherent sets from sparse and incomplete trajectory data.Electron tomography image reconstruction using data-driven adaptive compressed sensing.Bayesian cluster identification in single-molecule localization microscopy data.Predicting the Maximum Earthquake Magnitude from Seismic Data in Israel and Its Neighboring Countries.Haplotype estimation for biobank-scale data sets.Experimental neutron spectroscopy data visualization: adaptive tessellation algorithm.Data Analytics for Smart Parking ApplicationsMachine learning and systems genomics approaches for multi-omics data.Aboriginal mitogenomes reveal 50,000 years of regionalism in Australia.Computer vision-based carbohydrate estimation for type 1 patients with diabetes using smartphonesIntestinal gas content and distribution in health and in patients with functional gut symptoms.Portraying the Expression Landscapes of B-CellLymphoma-Intuitive Detection of Outlier Samples and of Molecular Subtypes.Pattern analysis of schistosomiasis prevalence by exploring predictive modeling in Jiangling County, Hubei Province, P.R. ChinaComputational approach for deriving cancer progression roadmaps from static sample data.A theorem proving approach for automatically synthesizing visualizations of flow cytometry dataTranscriptomic profiling of Melilotus albus near-isogenic lines contrasting for coumarin contentNeuronal assembly detection and cell membership specification by principal component analysis.
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P2860
description
im März 1982 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована в березні 1982
@uk
name
Least squares quantization in PCM
@en
Least squares quantization in PCM
@nl
type
label
Least squares quantization in PCM
@en
Least squares quantization in PCM
@nl
prefLabel
Least squares quantization in PCM
@en
Least squares quantization in PCM
@nl
P356
P1476
Least squares quantization in PCM
@en
P2093
P304
P356
10.1109/TIT.1982.1056489
P577
1982-03-01T00:00:00Z