Search alternatives:
statistical learning » statistical sampling (Expand Search)
statistical modeling » statistical modelling (Expand Search), statistical models (Expand Search), statistical sampling (Expand Search)
learning forces » learning courses (Expand Search)
statistical learning » statistical sampling (Expand Search)
statistical modeling » statistical modelling (Expand Search), statistical models (Expand Search), statistical sampling (Expand Search)
learning forces » learning courses (Expand Search)
-
1
Inference for autoregressive and moving average models with extreme value distribution via simulation study
Published 2015“…To achieve our objectives, a stationary autoregressive and moving average models with Gumbel distributed innovation is proposed and we characterise the short-term dependence among maxima, arising from light-tailed Gumbel distribution over a range of sample sizes with varying degrees of dependence. …”
Get full text
Thesis -
2
Multiscale approach to nematic liquid crystals via statistical field theory
Published 2018“…We propose an approach to a multiscale problem in the theory of thermotropic uniaxial nematics based on the method of statistical field theory. This approach enables us to relate the coefficients A, B, C, L1, and L2 of the Landau-de Gennes free energy for the isotropic-nematic phase transition to the parameters of a molecular model of uniaxial nematics, which we take to be a lattice gas model of nematogenic molecules interacting via a short-ranged potential. …”
Get full text
Get full text
Journal Article -
3
Modeling and forecasting customer demands
Published 2011“…In this paper, I have made an attempt to seek what statistical models and forecasting techniques which are appropriate to support decision making in the operational level of supply chain while dealing with customer demands on short life cycle products to avoid undesired production condition. …”
Get full text
Final Year Project (FYP) -
4
Uncertainty quantification framework for combined statistical spatial downscaling and temporal disaggregation for climate change impact studies on hydrology
Published 2017“…The Statistical Downscaling Model (SDM) is the bridging model which is used to downscale the output from the General Circulation Model (GCM) for increasing the spatial resolution of future climate scenarios. …”
Get full text
Thesis -
5
A Non‐Intrusive Machine Learning Framework for Debiasing Long‐Time Coarse Resolution Climate Simulations and Quantifying Rare Events Statistics
Published 2024“…Previous efforts have attempted to train such operators using loss functions that match statistics. However, this approach falls short with events that have longer return period than that of the training data, since the reference statistics have not converged. …”
Get full text
Article -
6
Bayesian neural network language modeling for speech recognition
Published 2023“…State-of-the-art neural network language models (NNLMs) represented by long short term memory recurrent neural networks (LSTM-RNNs) and Transformers are becoming highly complex. …”
Get full text
Journal Article -
7
Topological data analysis for fake news detection
Published 2022Get full text
Final Year Project (FYP) -
8
Statistical modeling of fully nonlinear hydrodynamic loads on offshore wind turbine monopile foundations using wave episodes and targeted CFD simulations through active sampling
Published 2024“…Accurately determining hydrodynamic force statistics is crucial for designing offshore engineering structures, including offshore wind turbine foundations, due to the significant impact of nonlinear wave–structure interactions. …”
Get full text
Article -
9
Towards haptic intelligence in robots by learning from demonstration
Published 2022“…This is motivated by the observation that classical kinaesthetic teaching by physically guiding the robot through a particular task is not sufficient for learning the haptics of the task. This is because the forces the human applies on the robot are also recorded along with the task forces, thus "corrupting" any useful strategy. …”
Get full text
Thesis-Doctor of Philosophy -
10
Theoretical study of spermatozoa sorting by dielectrophoresis or magnetophoresis with supervised learning
Published 2019“…The flagellum waveform is prescribed analytically, and subsequently solved from force and moment balance. The hydrodynamic force acting on the sperm is computed using Resistive Force Theory as well as Slender Body Theory, and the resulting velocity is compared qualitatively and quantitatively. …”
Get full text
Get full text
Thesis -
11
Differentially private deep learning for time series data
Published 2020Get full text
Final Year Project (FYP) -
12
Measuring dynamical uncertainty with Revealed Dynamics Markov Models
Published 2020Get full text
Journal Article -
13
Environmental risk factors for self-harm during imprisonment: A pilot prospective cohort study
Published 2025Journal article -
14
Environmental risk factors for self-harm during imprisonment: a prospective cohort study
Published 2024Internet publication -
15
Modelling and characterization of membrane fouling in osmotically-driven membrane processes (ODMPs)
Published 2021“…From qualitive analysis to quantitative analysis, the location of peak raised by colloidal deposition is used to differentiate the deposition on surface of active layer and inside of support layer after being analyzed by arrival time shift and confirmed by statistical testing. Moreover, the further short-time Fourier transformation (STFT) was applied to transfer the original time domain data into time-frequency domain, which reveal a noticeable magnitude reduction on high frequency components when Rayleigh scattering was triggered by particle inside of membrane pores. …”
Get full text
Thesis-Doctor of Philosophy -
16
Forecasting of hydropower production using Box-Jenkins model at Tasik Kenyir, Terengganu
Published 2024Get full text
Conference or Workshop Item -
17
Forecasting green sea turtle (Chelonia mydas) landing in Sarawak using grey model
Published 0002“…Using data from 1949 to 2016, GM (1,1) was found to be the most suitable model for the given dataset, exhibiting the lowest Root Mean Square Error (RMSE) and Mean Absolute Error (MAE) as compared to other statistical models such as Autoregressive Integrated Moving Average (ARIMA), Long Short-Term Memory (LSTM) and Exponential Smoothing. …”
Get full text
Article -
18
An analysis on the traffic processing efficiency of a combination of serial and parallel bottlenecks
Published 2019Get full text
Get full text
Journal Article -
19
Machine learning baseline energy model (MLBEM) to evaluate prediction performances in building energy consumption
Published 2024“…The hours and temperature are considered as independent variables to be tested with residual error evaluations, whilst the correlation coefficient, coefficient of determination, and training time are also takeninto account. Three models with different categories involving Long Short-Term Memory (LSTM), Support Vector Regression (SVR), and AutoRegressive Integrated Moving Average with Exogenous inputs (ARIMAX) were compared, concluding that SVR was the best and can be used as a universal model in the Machine Learning Baseline Energy Model (MLBEM) studies. …”
Get full text
Article -
20
Challenges and Solution of Online Learning and Assessment Amidst the COVID-19 Pandemic: A Case Study in Universiti Utara Malaysia (S/O 14793)
Published 2021“…However, with the pandemic, language instructors are forced to utilize online platforms to teach and assess the students. …”
Get full text
Monograph