Title: Risultati dell
1Risultati dellindagine sul Rischio Paese
condotta con le metodologie MCDM e SOM
- PhD Francesca Bernè, ing. Mattia Ciprian
- francescab_at_econ.units.it
- mciprian_at_units.it
2Introduction - Generation Models - Country data -
Ratios
- An overview of country risk
- Modelling financial crisis the generation
approach - Financial crises an historical perspective
- Country risk assessment methodologies
- Country data and ratios
3Introduction - Generation Models - Country data -
Ratios
- First-generation model (Krugman, 1979)
- Fixed exchange rate budget deficit monetary
expansion drop in reserves - financial crisis devaluation
- Second-generation crisis model (Obstfeld, 1985)
- Unsustainable fixed parity current account
deficit - Portofolio deficit capital outflows reserves
exhaustion - Exchange rate depreciation
4Introduction - Generation Models - Country data -
Ratios
- Third-generation crisis model (Krugman, 1997
Radelet and Sachs, 1998) - Weak financial intermediation institutions bad
governance - Speculative short-term capital flows debt
overhang and official reserve drop - Financial panic and bank liquidations
5Introduction Generation Models Country data -
Ratios
- Second-generation adjusted model of
self-fulfilling crisis (Williamson, 2002) - Macroeconomic fundamentals in intermediate
situation (growth, inflation, current account,
budget, debt) - Multiple equilibria depending on
- regional contanimation speculative attacks
bad equilibrium default - robust adjustement credibility good
equilibrium sustainable debt servicing
capital market access
6Introduction Generation Models - Country data -
Ratios
- Other models
- Maturity mismatch
- Currency mismatch
7Introduction Generation Models - Country data -
Ratios
- Historical perspective
- Mexican crisis (1994)
- Russian crisis (1998)
- Asian crisis (1997-1998)
- Argentina crisis (2001-2002)
8Introduction - Generation Models - Country data -
Ratios
- Country data
- Sources
- UNDP
- WORLD BANK
- COFACE
- OECD
- UNCTAD
- ICRG
- IMF
- CIA
- ISAE
9Country data
- Countries (all the world)
- Europa and CSI, Americas, Asia and Oceania,
Nord Africa and Middle East, Sub-saharian Africa
52 Countries, 22 ratios, year 2004, Argentina
2001-2002 Source CIA, COFACE
- Emerging Market Countries, Developing Countries,
Least Development Countries
27 Countries, 18 ratios, period 1983 - 2000 (18
years) Source ISAE
Introduction Generation Models Country data -
Ratios
10Ratios
birth rate, death rate, debt external, exports
(variation ), imports (variation), GDP
purchasing power parity, GDP no purchasing power
parity, inflation rate, public balance/GDP,
growth, net migration rate, investment, reserve
foreign exchange gold, infantility mortality
rate, life expectancy at birth, fertility rate,
labour force, internet users, industrial
production growth rate electricity consumption,
electricity production, oil consumption
Introduction Generation Models Country data -
Ratios
11Ratios
default SPs, default state t-1 SPs, GDP
billion , GDP growth rate, rate of inflation,
exchange rate in purchasing power parity,
average interest rate, exports, foreign direct
investment, imports, total interest payment,
international reserve, total external debt,
short term external debt, interest on short term
external debt, total debt service, long term
debt service, current account balance
Introduction Generation Models Country data -
Ratios
12SUMMARY
- Introduction
- Tools MCDM
- SOM
- Results
- Conclusions.
13Introduction Tools (MCDM SOM) - Results
Conclusions
- INTRODUCTION
- The increasing complexity of financial problems
over the past decades has driven analysts to
develop and adopt more sophisticated quantitative
analysis techniques furthermore, in the last
years, is growing the opinion that the criterion
to guide financial decisions has to be
multidimensional.
14Examples
- M. Doumpos, C. Zopounidis Assessing financial
risks using a multicriteria sorting procedure
the case of country risk assessment. OMEGA,
vol.29, no. 1, 97-109, April 2000 - C. Zopounidis, M. Doumpos Multi-criteria
decision aid in financial decision making
methodologies and literature review. Journal Of
Multi-Criteria Decision Analysis, 2002 - C. Zopounidis, M. Doumpos On the Use of a
Multi-Criteria Hierarchical Discrimination
Approach for Country Risk Assessment. Journal Of
Multi-Criteria Decision Analysis, 2002 - G. Deboeck T. Kohonen Visual Explorations in
Finance with self organizing maps,
Springer-Verlag, 1998 - G. Deboeck Data mining with Self Organizing
Maps a practical application, internet, 1998
Introduction Tools (MCDM SOM) - Results
Conclusions
15Introduction Tools (MCDM SOM) - Results
Conclusions
MCDM
- Decision has inspired reflection of many thinkers
since the ancient times. The great philosophers
Aristotle, Plato, and Thomas Aquinas, to mention
only a few names, discussed the capacity of
humans to decide and in some manners claimed that
this possibility is what distinguishes humans
from animals. - Classically, for example in economics, it is
supposed that preference can be represented by a
utility function assigning a numerical value to
each action such that the more preferable an
action, the larger its numerical value. Moreover,
it is very often assumed that the comprehensive
evaluation of an action can be seen as the sum of
its numerical values for the considered criteria.
Let us call this the classical model. It is very
simple but not too realistic J. Figueira, S.
Greco, M. Ehrgott Multiple Criteria Decision
Analysis STATE OF THE ART SURVEYS Kluwer,
2005.
16Introduction Tools (MCDM SOM) - Results
Conclusions
MCDM
- Interactive methods
- Multi Attribute Utility Theory (MAUT)
- Outranking Methods.
- CODASID
17Introduction Tools (MCDM SOM) - Results
Conclusions
CODASID
- This method attempts to generate a clear
preference order for alternative designs. - The basic concept is that the best action should
have the shortest distance from an ideal design
and the greatest from a negative ideal design. - The inputs required by CODASID are
- a matrix containing the objects to be explored
during the decision procedure - a vector of weights expressing the relative
importance of one attribute with respect to the
others.
18Introduction Tools (MCDM SOM) - Results
Conclusions
SOM
- The self-organizing map (SOM) is a new, effective
software tool for the visualization of
high-dimensional data. It implements an orderly
mapping of a high-dimensional distribution onto a
regular low-dimensional grid. - Thereby it is able to convert complex, non-linear
statistical relationships between
high-dimensional data items into simple geometric
relationships on a low-dimensional display. - As it compresses information while preserving the
most important topological and metric
relationships of the primary data items on the
display, it may also be thought to produce some
kind of abstractions. - The self-organizing map, T. Kohonen,
Neurocomputing 21, 1998.
19Self Organizing Maps
Introduction Tools (MCDM SOM) - Results
Conclusions
20 Results Evolution of developing countries
- We have obtained very encouraging results some
of they are represented in figure. - It is worth to note that every important fallout,
historically occurred to a country, has been
detected as a rank variation.
Introduction Tools (MCDM SOM) - Results (MCDM)
Conclusions
21 Results Evolution of developing countries
Introduction Tools (MCDM SOM) - Results (MCDM)
Conclusions
22Results Ranking obtained from CODASID
Introduction Tools (MCDM SOM) - Results (MCDM)
Conclusions
23Results SOM
- We have conducted two kinds of analysis on data
- factor study and individuation of local
correlations in order to understand the logics
joining the economics and social aspects of
countries we trained a rectangular map with
20x10 hexagonal nodes during 15000 cycles - a clustering analysis based on credit risks, to
produce a visual representation, and to verify
the World Bank's classification according to the
income level.
Introduction Tools (MCDM SOM) - Results (SOM)
Conclusions
24Factor study
- We have obtained, as foreseen by us, some obvious
relations as between Energy Consumption and
Energy Production. - The correlation is 0,963
Introduction Tools (MCDM SOM) - Results (SOM)
Conclusions
25Factor study - Local correlation
- After all SOMs are very powerful in showing, in
certain areas, the non-linear dependencies as in
fig. The statistical correlation between the
factors GDP Growth Rate and Industrial Production
Growth Rate is very low 0,347.
Introduction Tools (MCDM SOM) - Results (SOM)
Conclusions
26Cluster analysis
Introduction Tools (MCDM SOM) - Results (SOM)
Conclusions
27Conclusions
As Meldrum said in a recent work a company needs
to examine the relationship between risk and its
businesses to make sure risk measures actually
help the company improve its business decisions
an additional risk is represented by country
risk. In our paper we show how SOM and MCDM could
be used as well tools to analyze this risk both
proved efficient in handling many data together
and producing a consistent classification of
countries according to their risk level. The
results have been compared with other recent
works.
Introduction Tools (MCDM SOM) - Results
Conclusions