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Journal ArticleDOI

Computation of asymmetric signal extraction filters and mean squared error for ARIMA component models

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TLDR
In this article, the authors developed an algorithm for computing filter weights for asymmetric, semi-infinite signal extraction filters, including the important case of the concurrent filter (for signal extraction at the current time point).
Abstract
. Standard signal extraction results for both stationary and nonstationary time series are expressed as linear filters applied to the observed series. Computation of the filter weights, and of the corresponding frequency response function, is relevant for studying properties of the filter and of the resulting signal extraction estimates. Methods for doing such computations for symmetric, doubly infinite filters are well established. This study develops an algorithm for computing filter weights for asymmetric, semi-infinite signal extraction filters, including the important case of the concurrent filter (for signal extraction at the current time point). The setting is where the time series components being estimated follow autoregressive integrated moving-average (ARIMA) models. The algorithm provides expressions for the asymmetric signal extraction filters as rational polynomial functions of the backshift operator. The filter weights are then readily generated by simple expansion of these expressions, and the corresponding frequency response function is directly evaluated. Recursive expressions are also developed that relate the weights for filters that use successively increasing amounts of data. The results for the filter weights are then used to develop methods for computing mean squared error results for the asymmetric signal extraction estimates.

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Citations
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Journal ArticleDOI

Machine learning methods for better water quality prediction

TL;DR: A Neuro-Fuzzy Inference System (WDT-ANFIS) based augmented wavelet de-noising technique has been recommended that depends on historical data of the water quality parameter and exhibited a significant improvement in predicting accuracy for all theWater quality parameters and outperformed all the recommended models.
Journal ArticleDOI

Water quality prediction model utilizing integrated wavelet-ANFIS model with cross-validation

TL;DR: This study proposed an augmented wavelet de-noising technique with Neuro-Fuzzy Inference System (WDT-ANFIS) based on the data fusion module for WQP that would be valuable to assist decision-makers in reporting the status of water quality, as well as investigating spatial and temporal changes.
Journal ArticleDOI

Matrix formulas for nonstationary arima signal extraction

TL;DR: General matrix formulas for minimum mean squared error signal extraction for a finitely sampled time series whose signal and noise components are nonstationary autoregressive integrated moving average processes are provided.
Journal ArticleDOI

Wavelet-based multiresolution analysis for data cleaning and its application to water quality management systems

TL;DR: In this study a wavelet-based multiresolution analysis technique (WMAT) is proposed for reducing noises induced by complex uncertainty and the approach is applied to a river water quality simulation system for showing its practicability in data cleaning and parameter estimation.
Journal Article

Frequency Domain Analyses of SEATS and X-11/12-ARIMA Seasonal Adjustment Filters for Short and Moderate-Length Time Series

TL;DR: In this paper, the authors investigate frequency domain properties, revealed by the squared gain and phase delay functions, of short and moderate-length linear seasonal adjustment filters of the ARIMAmodel-based signal extraction method of SEATS.
References
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Journal ArticleDOI

An ARIMA-Model-Based Approach to Seasonal Adjustment

TL;DR: In this paper, a model-based procedure to decompose a time series uniquely into mutually independent additive seasonal, trend, and irregular noise components is proposed, where the series is assumed to follow the Gaussian ARIMA model.
Journal ArticleDOI

Decomposition of Seasonal Time Series: A Model for the Census X-11 Program

TL;DR: In this article, the linear filter version of the Census X-11 program for time-series decomposition can be approximately justified in terms of an additive model with stochastic trend, seasonal and noise components.
Journal ArticleDOI

Estimation, Filtering, and Smoothing in State Space Models with Incompletely Specified Initial Conditions

TL;DR: In this article, the likelihood is defined for a state space model with incompletely specified initial conditions by transforming the data to eliminate the dependence on the unspecified conditions, and this approach is extended to obtain estimates of the state vectors and predictors and interpolators for missing observations.
Journal ArticleDOI

Signal Extraction for Nonstationary Time Series

TL;DR: In this article, the authors give exact solutions in the forms of expressions for $E(s_tmid\{z_t\})$ and under two sets of alternative assumptions regarding the generation of $z, s, and n_t.
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