Title: SECURITIZA
1Chapter 4
2Market Indices for USA and Latin America, 1988 -
1996
3MSCI (Morgan Stanley) Indices Summary Statistics
and Correlations
4Specification of the Model
5 Estimation of Model Brazil
6Eq. 1 Pre-filtering of Data
7Partial Derivatives for Brazil
8 9Estimated Weights and T-Statistics Brazil
10Chile Model
11Linear, Polynomial, and NN Estimates Chilean Model
12Partial Derivatives for Chile
13(No Transcript)
14Weights and T-Statistics for NN Model Chile
15Mexico Model
16Linear, Polynomial, and NN Esitamtes Mexico
17Partial Derivatives for Mexico
18(No Transcript)
19Weights and T-Statistics for Mexico
20Chapter 5
21Eq.1Problem of Optimal Portfolio Selection
Risk/Return Trade-Off
22Eq.Semi-Variance
23Downside Risk Estimation
Probability
Risk is the area in the left tail of distribution
Returns
T minimum acceptable return
24Eq3 Gaussian Probability Distribution
25Eq.4 Bandwidth Parameter
26Eq.5 Gaussian Kernel Estimator
27Eq.6 Delta Vector
28Eq.7 Epanechnikov Kernel Estimator
29Figura 1. Log-Normal Time Series
30Figura 2 Histogram of Log-NormalRandom Variable
31Figure 3Density Estimation of Log-Normal Random
Variable
32Figura 4 Realization of Two Log-Normal Random
Variables
33Table 1 Risk Measure of x and y
34Table 2 Measures of Returns, MSCI Indices
35Table 3 Optiomal Portfolio Weights,USA and
Latin America
36Figura 5Density Function for Optimal Portfolio
Returns, USA and Latin America
37Table 4 Optimal Portfolio Weights, USA and Asia
38Density Function for USA and Asia Portfolios
39Table 5 World Portfolio USA, Asia, Latin
America
40Figure 7 Density Function, USA-Asia-Latin
America
41Chapter VI
42Discminant Analysis
- We observe two groups, x1 and x2, which are sets
of characteristics of members of two groups, 1
and 2 - How can we decide if a new set of characteristics
should be classified in group 1 or 2? - We can use linear discriminant analysis
- Logit Analysis
- Probit Analysis
- Neural Network Analysis
43Eq.1 Definition of Means
44Eq.2 Variance of Two Groups
45Eq.3Quadratic Optimization Problem Linear
Discriminant Analysis
46Eq.4 Discriminant Vector
47Eq.5 Logit Model.
48Eq.6 Likelihood Function for Logit Model
49Eq 7 Partial Derivative of Logit Model
50Eq 8 Probit Model
51Eq 9 Likelihood Function for Probit Model
52Equação 10 Partial Derivative for Probit Model
53Eq 11 Neural Network Binary Choice Model
54Eq 12 Partial Derivative for Neural Network
Model
55 Figura 1 MSCI Index for Brazil
56 Table 1 Performance of Moving Average
Trading Rule
57 Figure 2 Latin American and US Stock Market
Indices
2000
1500
1000
500
0
12/16/91
11/15/93
10/16/95
1/15/90
ARGENTINA
MEXICO
BRASIL
USA
CHILE
58 Eq 13 Dependent Variable in Buy/Sell Model
59 Table 2 Performance of Trading Rules of
Alternative Models
60 Table 3 Consumer Credit Model Estimates
61 Table 4 Analysis of Bank Insolvency in Texas
62 Figure 3 Bank Insolvency Model Partial
Derivatives Logit and Probit Models
1.5
1
0.5
Logit
0
Probit
1
5
7
11
13
15
17
19
21
-0.5
-1
-1.5
Number of Variable
63 Figure 4 Bank Insolvency Model-Partial
Derivatives Neural Network Model
6E-10
4E-10
2E-10
0
1
5
7
11
13
15
17
19
21
-2E-10
-4E-10
Number of Variable