A N E MPIRICAL A NALYSIS OF P ASS -T HROUGH OF O IL P RICES TO I NFLATION : E VIDENCE FROM N IGERIA. * AUWAL, Umar Department of Economics, Ahmadu Bello.

Slides:



Advertisements
Similar presentations
EXCHANGE RATE RISK CASE STUDY ROMANIA STUDENT: ŞUTA CORNELIA-MĂDĂLINA SUPERVISOR: PROF. MOISĂ ALTĂR.
Advertisements

COINTEGRATION 1 The next topic is cointegration. Suppose that you have two nonstationary series X and Y and you hypothesize that Y is a linear function.
Augmented Dickey-Fuller Test Equation Dependent Variable: D(LGDPI) Method: Least Squares Sample (adjusted): Included observations: 44 after adjustments.
Christopher Dougherty EC220 - Introduction to econometrics (chapter 13) Slideshow: tests of nonstationarity: example and further complications Original.
============================================================ Dependent Variable: LGHOUS Method: Least Squares Sample: Included observations:
FITTING MODELS WITH NONSTATIONARY TIME SERIES 1 Detrending Early macroeconomic models tended to produce poor forecasts, despite having excellent sample-period.
Chapter 4 Using Regression to Estimate Trends Trend Models zLinear trend, zQuadratic trend zCubic trend zExponential trend.
LOGO Analysis of Unemployment Qi Li Trung Le David Petit Brian Weinberg Dwaraka Polakam Doug Skipper-Dotta Team #4.
Angela Sordello Christopher Friedberg Can Shen Hui Lai Hui Wang Fang Guo.
Factors Determining the Price Of Used Mid- Compact Size Vehicles Team 4.
1 Lecture Twelve. 2 Outline Failure Time Analysis Linear Probability Model Poisson Distribution.
TAKE HOME PROJECT 2 Group C: Robert Matarazzo, Michael Stromberg, Yuxing Zhang, Yin Chu, Leslie Wei, and Kurtis Hollar.
Marietta College Week 14 1 Tuesday, April 12 2 Exam 3: Monday, April 25, 12- 2:30PM Bring your laptops to class on Thursday too.
1 Econ 240 C Lecture 3. 2 Part I Modeling Economic Time Series.
1 Econ 240 C Lecture White noise inputoutput 1/(1 – z) White noise input output Random walkSynthesis 1/(1 – bz) White noise input output.
Is There a Difference?. How Should You Vote? Is “Big Government” better?Is “Big Government” better? –Republicans want less government involvement. –Democrats.
Global Warming: Is It True? Peter Fuller Odeliah Greene Amanda Smith May Zin.
1 Econ 240 C Lecture Time Series Concepts Analysis and Synthesis.
Determents of Housing Prices. What & WHY Our goal was to discover the determents of rising home prices and to identify any anomies in historic housing.
Car Sales Analysis of monthly sales of light weight vehicles. Laura Pomella Karen Chang Heidi Braunger David Parker Derek Shum Mike Hu.
1 Econ 240 C Lecture 3. 2 Time Series Concepts Analysis and Synthesis.
Why Can’t I Afford a Home? By: Philippe Bonnan Emelia Bragadottir Troy Dewitt Anders Graham S. Matthew Scott Lingli Tang.
1 Motor Vehicle Accidents Hunjung Kim Melissa Manfredonia Heidi Braunger Yaming Liu Jo-Yu Mao Grace Lee December 1, 2005 Econ 240A Project.
Violent Crime in America ECON 240A Group 4 Thursday 3 December 2009.
Lecture Week 3 Topics in Regression Analysis. Overview Multiple regression Dummy variables Tests of restrictions 2 nd hour: some issues in cost of capital.
Alcohol Consumption Allyson Cady Dave Klotz Brandon DeMille Chris Ross.
California Expenditure VS. Immigration By: Daniel Jiang, Keith Cochran, Justin Adams, Hung Lam, Steven Carlson, Gregory Wiefel Fall 2003.
So far, we have considered regression models with dummy variables of independent variables. In this lecture, we will study regression models whose dependent.
1 Lecture One Econ 240C. 2 Outline Pooling Time Series and Cross- Section Review: Analysis of Variance –one-way ANOVA –two-way ANOVA Pooling Examples.
Dissertation Paper Real effective exchange rates and their influence on Romania’s trade with European Union Countries MSc Student :Grigorescu Madalina.
GDP Published by: Bureau of Economic Analysis Frequency: Quarterly Period Covered: prior quarter Volatility: Moderate Market significance: very high Web.
MLB STATS Group SIX Astrid AmsallemJoel De Martini Naiwen ChangQi He Wenjie HuangWesley Thibault.
1 Lecture One Econ 240C. 2 Einstein’s blackboard, Theory of relativity, Oxford, 1931.
1 Power Fifteen Analysis of Variance (ANOVA). 2 Analysis of Variance w One-Way ANOVA Tabular Regression w Two-Way ANOVA Tabular Regression.
Zhen Tian Jeff Lee Visut Hemithi Huan Zhang Diana Aguilar Yuli Yan A Deep Analysis of A Random Walk.
1 Power Fifteen Analysis of Variance (ANOVA). 2 Analysis of Variance w One-Way ANOVA Tabular Regression w Two-Way ANOVA Tabular Regression.
Forecasting Fed Funds Rate Group 4 Neelima Akkannapragada Chayaporn Lertrattanapaiboon Anthony Mak Joseph Singh Corinna Traumueller Hyo Joon You.
U.S. Tax Revenues and Policy Implications A Time Series Approach Group C: Liu He Guizi Li Chien-ju Lin Lyle Kaplan-Reinig Matthew Routh Eduardo Velasquez.
Matt Mullens Gulsah Gunenc Alex Keyfes Gaoyuan Tian Andrew Booth.
DURBIN–WATSON TEST FOR AR(1) AUTOCORRELATION
Predicting volatility: a comparative analysis between GARCH Models and Neural Network Models MCs Student: Miruna State Supervisor: Professor Moisa Altar.
What decides the price of used cars? Group 1 Jessica Aguirre Keith Cody Rui Feng Jennifer Griffeth Joonhee Lee Hans-Jakob Lothe Teng Wang.
Welcome to Econ 420 Applied Regression Analysis Study Guide Week Five Ending Wednesday, September 26 (Note: Exam 1 is on September 27)
The Academy of Economic Studies Bucharest Doctoral School of Banking and Finance DISSERTATION PAPER CENTRAL BANK REACTION FUNCTION MSc. Student: ANDRA.
SPURIOUS REGRESSIONS 1 In a famous Monte Carlo experiment, Granger and Newbold fitted the model Y t =  1 +  2 X t + u t where Y t and X t were independently-generated.
Welcome to Econ 420 Applied Regression Analysis Study Guide Week Four Ending Wednesday, September 19 (Assignment 4 which is included in this study guide.
PARTIAL ADJUSTMENT 1 The idea behind the partial adjustment model is that, while a dependent variable Y may be related to an explanatory variable X, there.
Christopher Dougherty EC220 - Introduction to econometrics (chapter 4) Slideshow: exercise 4.5 Original citation: Dougherty, C. (2012) EC220 - Introduction.
2010, ECON Hypothesis Testing 1: Single Coefficient Review of hypothesis testing Testing single coefficient Interval estimation Objectives.
FUNCTIONAL FORMS OF REGRESSION MODELS Application 5.
Air pollution is the introduction of chemicals and biological materials into the atmosphere that causes damage to the natural environment. We focused.
MEASURES OF GOODNESS OF FIT The sum of the squares of the actual values of Y (TSS: total sum of squares) could be decomposed into the sum of the squares.
EC208 – Introductory Econometrics. Topic: Spurious/Nonsense Regressions (as part of chapter on Dynamic Models)
With the support of the European Commission 1 Competitiveness of the SME’s in Albania A review of the business conditions with a focus on financing conditions.
NURHIKMAH OLA LAIRI (LAILUOLA) Ph.D International Trade Student Id :
Partial Equilibrium Framework Empirical Evidence for Argentina ( )
Page 0 Modelling Effective Office Rents by Matt Hall DTZ, 125 Old Broad Street, London, EC2N 2BQ Tel: +44 (0)
Determinants of inflation in Romania ACADEMY OF ECONOMIC STUDIES BUCHAREST DOCTORAL SCHOOL OF FINANCE AND BANKING Supervisor : Prof. MOISĂ ALTĂR Student:
Exchange Rate and Economic Growth in Indonesia ( ) Presented by : Shanty Tindaon ( )
Maize Price Differences and Evidence of Spatial Integration in Malawi: The Case of Selected Markets BY LOVEMORE NYONGO ICAS VI: RIO DE JANEIRO, BRAZIL.
WSUG M AY 2012 EViews, S-Plus and R Damian Staszek Bristol Water.
The Relation of Energy to the Macroeconomy
An Assessment of Climate Change
MR. MIM. Riyath DR. A. Jahfer
Monetary Policy Transmission Mechanism in Zambia
CHAPTER 16 ECONOMIC FORECASTING Damodar Gujarati

Vector AutoRegression models (VARs)
Presentation transcript:

A N E MPIRICAL A NALYSIS OF P ASS -T HROUGH OF O IL P RICES TO I NFLATION : E VIDENCE FROM N IGERIA. * AUWAL, Umar Department of Economics, Ahmadu Bello University, Nigeria – West Africa , +234(0)

O RGANIZATION OF THE WORK Introduction. Received Knowledge vs. Objective(s). Data Source and Estimation techniques. Models Specification. Unit Root test. Models Estimation, interpretation and Analysis. Summary and Conclusions. 2

1.0 INTRODUCTION Oil prices have risen sharply over the last year, leading to concerns that we could see a repeat of the 1970s, when rising oil prices were accompanied by severe recessions and surging inflation. The oscillation of global oil prices has always been a major concern in market instability. This instability resulted into inflation. Consequently, the price of oil and inflation are often seen as being connected within a cause and effect framework. As oil prices move up or down, inflation follows in the same direction. The reason why this happens may be that oil is a major input in the economy - it is used in critical activities such as fueling transportation or goods made with petroleum products - and if the costs of intermediate input rise, so should the cost of end output ( p). p 3

I NTRODUCTION ( CONT …) Crude Oil Prices  Period of high price strategy in the oil market  Period of substantial decrease in crude oil prices - It reached a peak of $147 in july,2008 and decrease to $38.6 in December, 2008 and now is below $80 (Abosedra, 2009).  Nigeria : (i)a mono-cultural economy (ii)recognized as one of the most volatile economies in the world  Volatility: a major constraint on development  Causes: planning more problematic and investment more risky (Ukwu et.al, 2003) 4

2.0 O BJECTIVES OF THE STUDY : There have been many papers that have examined pass- through of oil price fluctuations to exchange rate as well as some that have examined pass-through to domestic inflation. Many of the recent studies have concentrated on the relationship between an country’s characteristics and the pass-through of oil price fluctuations in that country. The objective of this paper is to empirically analyze the pass- through of oil price shock to inflation in Nigeria. Specifically – It examines the historical relationship between oil price shocks and inflation in light of trend analysis and some recent research, and Estimate and analyzes the impact of oil price and exchange rates on inflation. it uses monthly data from 2003:01 to 2012:10. Received KnowledgeObjective(s) 5

3.0 D ATA SOURCE AND M ETHODOLOGY Monthly data :2003: :10 Type : Crude Oil Prices, Exchange rates and Inflation Source: Central Bank of Nigeria’s website – Data and Statistics division OLS, VAR-VECM and Granger Causality model were employed to analyze the data. Data SourceModels employed 6

TREND ANALYSIS 7

8

9

10

ModelModel Specification OLS, VAR-VECM This study employs OLS and VAR-VECM for empirical analysis and only focusses on three chosen variables: Oil Price (Bonny light, $/B), Exchange rates (N/$) and Inflation (All items – year on change). Where Inf t is Inflation rate for period t. OP t is Crude Oil Price for period t, and EX t is exchange rates for period t. To get the best result, the equation must be in log for all variables. Pre – estimation tests conducted Lag selection criteria, Johansen test of Co-integration, System equation estimation 4.0 Models Specification 11

12 ADF – TEST VariableOrder of IntegrationCritical Values Computed Values Crude Oil Price I(1) (1%) (5%) (10% Exchange Rate I(1) (1% ) (5% ) (10% ) Inflation Rate I(1) ( 1%) (5%) (10% Unit Root Test

6.0 MODEL PRESENTATION, ESTIMATION & ANALYSIS OF THE RESULTS : 13

O RDINARY L EAST S QUARES O UTPUT 14 Dependent Variable: INF Method: Least Squares Date: 04/22/13 Time: 16:38 Sample (adjusted): 2003M M09 Included observations: 117 after adjustments VariableCoefficientStd. Errort-StatisticProb. OP EX C R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood Hannan-Quinn criter F-statistic Durbin-Watson stat Prob(F-statistic)

G RANGER CAUSALITY TEST Pairwise Granger Causality Tests Date: 04/22/13 Time: 17:31 Sample: 2003M M12 Lags: 2 Null Hypothesis:ObsF-StatisticProb. EX does not Granger Cause OP OP does not Granger Cause EX INF does not Granger Cause OP OP does not Granger Cause INF INF does not Granger Cause EX EX does not Granger Cause INF

C O - INTEGRATION – OIL PRICE TO INFLATION 16 Date: 04/22/13 Time: 16:30 Sample (adjusted): 2003M M09 Included observations: 114 after adjustments Trend assumption: Linear deterministic trend Series: INF OP Lags interval (in first differences): 1 to 2 Unrestricted Cointegration Rank Test (Trace) Hypothesized Trace0.05 No. of CE(s)EigenvalueStatisticCritical ValueProb.** None * At most Trace test indicates 1 cointegrating eqn(s) at the 0.05 level * denotes rejection of the hypothesis at the 0.05 level **MacKinnon-Haug-Michelis (1999) p-values

VECM ESTIMATES Error Correction:D(INF)D(OP) CointEq ( ) ( ) [ ][ ] D(INF(-1)) ( ) ( ) [ ][ ] D(INF(-2)) ( ) ( ) [ ][ ] D(OP(-1)) ( ) ( ) [ ][ ] D(OP(-2)) ( ) ( ) [ ][ ] C ( ) ( ) [ ][ ] 17

VECM OUTPUT – SYSTEM EQUATION 18 Dependent Variable: D(INF) Method: Least Squares Date: 04/22/13 Time: 16:32 Sample (adjusted): 2003M M09 Included observations: 114 after adjustments D(INF) = C(1)*( INF(-1) *OP(-1) ) + C(2)*D(INF(-1)) + C(3)*D(INF(-2)) + C(4)*D(OP(-1)) + C(5)*D(OP(-2)) + C(6) CoefficientStd. Errort-StatisticProb. C(1) C(2) C(3) C(4) C(5) C(6) R-squared Mean dependent var Adjusted R-squared S.D. dependent var S.E. of regression Akaike info criterion Sum squared resid Schwarz criterion Log likelihood Hannan-Quinn criter F-statistic Durbin-Watson stat

C OEFFICIENT TEST – WALD TEST APPROACH Wald Test: Equation: EQN Test StatisticValuedfProbability F-statistic (5, 108) Chi-square Null Hypothesis: C(1)=C(2)=C(3)=C(4)=C(5)=0 Null Hypothesis Summary: Normalized Restriction (= 0)ValueStd. Err. C(1) C(2) C(3) C(4) C(5) Restrictions are linear in coefficients. 19

7.0 S UMMARY AND CONCLUSION The co-integration between oil price and inflation variable exist at 5% significant level in the long run. For granger causality test, we found that the inflation does not granger cause to the exchange rate but it does granger cause to the oil price. The oil price does granger cause to the inflation but it does not granger cause to the exchange rate. The exchange rate does not granger cause to both of the variables (Inflation and Oil Price). So, the oil crude price can give an effect on inflation. If the rate of crude oil price changes, the inflation also changes. The finding will contribute to Nigerian government in making policy towards crude oil price to avoid from the inflation. 20

T HANK Y OU FOR Y OUR A TTENTION 21