Do you have a Time Series research problem?

We are at your service for Time Series Analysis

Get the full complement of our expert statisticians in resolving your time series analysis research problems.

Cutting-edge and insightful analyses

Time Series Data preliminaries

We provide the theoretical justification for the choice of time series analysis of your data. This is based on the intrinsic characteristics of your data and your research goals.
We will produce basic descriptive and graphical summaries of your time series data. These include the time plot, autocorrelation function (acf), partial autocorrelation function

Extensive Analysis

Box-Jenkins Methodology approach

All the steps in the Box-Jenkins method (Model Identification, Model Selection, Parameter Estimation, Model Diagnostics, and Forecasting) will be applied to the time series data.

Robust Modelling Choices

Autoregressive (AR), Moving Average (MA), ARIMA, VAR, ARCH, GARCH, and other relevant models will be explored using your data.

Extensive Analysis

Box-Jenkins Methodology approach

All the steps in the Box-Jenkins method (Model Identification, Model Selection, Parameter Estimation, Model Diagnostics, and Forecasting) will be applied to the time series data.

Robust Modelling Choices

Autoregressive (AR), Moving Average (MA), ARIMA, VAR, ARCH, GARCH, and other relevant models will be explored using your data.

Methods for Analysis of Time Series Data

The method of analysis could be frequency-domain (wave let analysis, spectral analysis) or time-domain (autocorrelation, cross correlation, scaled correlation, etc).

Time Series Analysis Tests

The full complement of time series analysis tests will be deployed as appropriate in yourresearc. Some of the prominent tests include stationarity test, unit root test, AugmentedDickey-Fuller (ADF) test, etc..
We can also provide direction in other aspects of Time Series Analysis including Granger Causality, Granger Co-integration and Johansen Co-integration for multiple time series.

Methods for Analysis of Time Series Data

The method of analysis could be frequency-domain (wave let analysis, spectral analysis) or time-domain (autocorrelation, cross correlation, scaled correlation, etc).

Time Series Analysis Tests

The full complement of time series analysis tests will be deployed as appropriate in yourresearc. Some of the prominent tests include stationarity test, unit root test, AugmentedDickey-Fuller (ADF) test, etc..
We can also provide direction in other aspects of Time Series Analysis including Granger Causality, Granger Co-integration and Johansen Co-integration for multiple time series.

Diverse Applications

Model Diagnostics and Forecasting

The array of relevant diagnostic tests will be applied on your data and forecasts (with confidence bounds) also presented.

Diverse Applications

Model Diagnostics and Forecasting

The array of relevant diagnostic tests will be applied on your data and forecasts (with confidence bounds) also presented.

Summarizing the data

Descriptive statistics and graphical representation

We will provide the requisite descriptive summaries to illuminate your research. A combination of descriptive and graphs will be used to furthers how case your research.

Summarizing the data

Descriptive statistics and graphical representation

We will provide the requisite descriptive summaries to illuminate your research. A combination of descriptive and graphs will be used to furthers how case your research.

Statistical Packages for Time Series Analysis

Goal-oriented analysis

Some of the software packages at our disposal for time series analysis are IBM SPSS, R, SAS, STATA, Python, etc.

Statistical Packages for Time Series Analysis

Goal-oriented analysis

Some of the software packages at our disposal for time series analysis are IBM SPSS, R, SAS, STATA, Python, etc.

Technical Support

Comprehensive Report of the Analysis

You will enjoy an excellent support system for your technical report in line with the research objectives.

Technical Support

Comprehensive Report of the Analysis

You will enjoy an excellent support system for your technical report in line with the research objectives.

“I highly recommend Stats4Edu’s Econometrics Time Series services. Their team is knowledgeable and experienced, providing insights and recommendations that I would have never discovered on my own. Their attention to detail and commitment to excellence was evident in every aspect of their work, and their customer service was exceptional.”

Olivia Smith

Researcher, United Kingdom

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Financial Risk Management Services

Our Financial Risk Management team provides comprehensive solutions to help clients manage financial risk and uncertainty, using econometric models and time series analysis to develop effective risk management strategies.

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Stats4edu offer for students

Students with a verified .edu email account are eligible for a Financial Support  (up to 250$) under some conditions. The discount will be applied to the first project order (excluding any renewals or Consultation booking). Students who have ordered a Project help, Supervision  within the last 6 months are not eligible for the discount. Offer only valid on future actions, not applicable to past payments. Discount shall be void and no longer valid if, for any reason, the order, or your right to use the Stats4edu.com services, is canceled, terminated, and/or suspended. One discount per customer/individual/entity. Contact support for more details .