Unit Roots for Time-Series Analysis

Unit Roots for Time-Series Analysis

The Unit Root Problem

An AR(1) series is said to be covariance stationary if the absolute value of the lag coefficient \(\text{b}_{1}\) is less than 1. If the absolute value of \(\text{b}_{1}=1\), the time series is said to have a unit root. All random walks have a unit root since they have \(\text{b}_{1}=1\). This implies that they are not covariance stationary; hence we cannot apply the standard linear regression to test for \(\text{b}_{1}=1\).

A Dickey-Fuller test can be used to establish if the time series has a unit root. A time series with unit roots should be transformed by first-differencing it to a covariance stationary time series, which can be effectively analyzed using regression analysis.

First-differencing is a technique that involves subtracting the dependent variable in the immediately preceding period from the current value of the time series to define a new dependent variable, \(y\). Thus, we model the change in the value of the dependent variable.

$$\text{y}_{\text{t}}=\text{x}_{\text{t}}-\text{x}_{\text{t}-1}=\epsilon_{\text{t}}$$

The first-differenced time series can then be modeled as an autoregressive time series. A properly differenced random walk time series is covariance stationary with a mean reversion level of 0.

Question

Which of the following is the most appropriate approach to transforming a time series with a unit root problem?

  1. Performing a Dickey-Fuller test.
  2. Modeling the first differences of the time series.
  3. Performing a log-linear transformation.

Solution

The correct answer is B.

A time series with a unit root can be first differenced to transform it into one that is covariance stationary. This is followed by estimating an autoregressive model for the first-differenced series.

First differencing involves subtracting the value of the time series in the immediately preceding period from the current value of the series to define a new dependent variable, \(y\).

A is incorrect. The Dickey fuller test is used to determine if the time series has a unit root.

C is incorrect. A log-linear transformation is appropriate when data grows at a constant rate.

Reading 5: Time Series Analysis

LOS 5 (j) Describe implications of unit roots for time-series analysis, explain when unit-roots are likely to occur and how to test for them, and demonstrate how a time series with a unit root can be transformed so it can be analyzed with an AR model.

Shop CFA® Exam Prep

Offered by AnalystPrep

Featured Shop FRM® Exam Prep Learn with Us

    Subscribe to our newsletter and keep up with the latest and greatest tips for success
    Shop Actuarial Exams Prep Shop Graduate Admission Exam Prep


    Daniel Glyn
    Daniel Glyn
    2021-03-24
    I have finished my FRM1 thanks to AnalystPrep. And now using AnalystPrep for my FRM2 preparation. Professor Forjan is brilliant. He gives such good explanations and analogies. And more than anything makes learning fun. A big thank you to Analystprep and Professor Forjan. 5 stars all the way!
    michael walshe
    michael walshe
    2021-03-18
    Professor James' videos are excellent for understanding the underlying theories behind financial engineering / financial analysis. The AnalystPrep videos were better than any of the others that I searched through on YouTube for providing a clear explanation of some concepts, such as Portfolio theory, CAPM, and Arbitrage Pricing theory. Watching these cleared up many of the unclarities I had in my head. Highly recommended.
    Nyka Smith
    Nyka Smith
    2021-02-18
    Every concept is very well explained by Nilay Arun. kudos to you man!
    Badr Moubile
    Badr Moubile
    2021-02-13
    Very helpfull!
    Agustin Olcese
    Agustin Olcese
    2021-01-27
    Excellent explantions, very clear!
    Jaak Jay
    Jaak Jay
    2021-01-14
    Awesome content, kudos to Prof.James Frojan
    sindhushree reddy
    sindhushree reddy
    2021-01-07
    Crisp and short ppt of Frm chapters and great explanation with examples.