Welcome to the last week of classes and exam week!

Dear students,

We are just a day away from the end of Fall 2022! Tomorrow, we will finish with the materials posted in Week 13. We will discuss feminist criminology.

Please make sure you are finishing up all your Steps. I am here to help you if you need any help. I am just an email away after tomorrow. I have office hours today, from 1 pm to 2 pm, and tomorrow right before the class.

See you all tomorrow at 11:00 am.

Reminder: Please complete the post-assessment (Step 9) by Tuesday!

The link for the assessment is here:

https://tinyurl.com/DAREPostAssessmentFall22

Dear students,

This is an important email about a required class activity. The course in which you are enrolled is participating in a project funded by the National Science Foundation to improve students’ quantitative literacy skills. As a result of our participation in this initiative, during the semester I am administering two rounds of assessments that focus on quantitative reasoning skills. Your participation in these assessments is a required classroom activity and counts towards attendance/participation. However, you have a choice as to whether or not you want your data to be used for research purposes. Please watch the video here to learn more about this project:

https://tinyurl.com/NSFDARE

In order to receive attendance/class participation credit, you must complete the post-assessment by December 14th. Your participation in these assessments is very important to evaluate the effectiveness of faculty efforts to teach quantitative data analysis. In some classes, students will complete the assessments even if they do not participate in any quantitative literacy activities. In other classes, they will undertake quantitative data analysis.

We ask that you kindly treat the assessments seriously as the results are important for understanding how we can effectively improve our curriculum. Your performance on the assessment has no bearing on your grade in this course and will never be used to evaluate you personally. That said, please try your best, but don’t try to look up answers as that will negatively impact our research.

Meanwhile, you do have the option of deciding whether you want your results to be used for research purposes. Regardless of whether or not you choose to participate in this research, the assessment you complete for class will be the same. However, if you choose to participate in the research, you will be paid $5.00 for your completion of the assessment and you will be asked some additional background questions.  

The principal investigators for this project, including Esther Wilder (Lehman College), Rebecca West (Lehman College), and Eduardo Vianna (LaGuardia Community College), would be extremely grateful if you would be willing to allow your data to be used for research. If you choose to do that, the research team will protect the confidentiality of your data. We can only provide compensation ($5) to students who are participants in this research study.

The link for the assessment is here:

https://tinyurl.com/DAREPostAssessmentFall22

Thank you for taking the time to do this!

The DARE Team

ESSAY 8

ECONOMETRICS
Conditional volatility model

Introduction
The study involved the prices of shares in the stock exchange market from 2007-01-03 till 2018-
4-30. The researcher selected a sample size of 2582 for the study. The prices’ opening, closing,
high and low values were recorded. Also, the researcher collected volumes of sales of the shares.
The data entry and cleaning were done in excel and then exported to R statistical software for
analysis. The data was converted into time-series data in R, ready for analysis. The study aimed
at obtaining the returns and fitting the generalized autoregressive conditional heteroskedasticity
(GARCH) and autoregressive conditional heteroskedasticity (ARCH). Those are the conditional
vitality model.
Results and findings
Prices
The share prices were plotted using the charSeries function in R. The data series shows that the
prices were high at the start of 2008 (around 35) but dropped significantly to the least price in the
series of around 16 at the end of the year. The highest prices were witnessed around the mid of
2016, with a price value of above 40. The plot of the prices of the shares demonstrated an
increasing trend, meaning that it was not stationary. The variance was not constant over the
series; thus, there was the presence of heteroskedasticity. Figure 1 below shows how the prices
of shares were distributed.

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Figure 1: Time series plot of prices of shares from 2007 to 2018
Returns
The returns are the changes in the prices of investment, asset, or a project over time. It can be
represented by the real values of the price change or percentage. A positive return indicates a
profit was made, while a negative return indicates a loss. The returns of the share prices were
estimated using dailyReturn in R as shown in the appendix. The returns indicated a maximum
profit of 14% and a maximum loss of 13% over the period. The average and standard deviations
of the returns were 0. The researcher plotted returns for easy interpretation and observed that
normality existed. Figure 2 below shows that the mean of the returns was constant all through at
zero. Mid 2013 was associated with the maximum loss while mid-2014 was associated with the
maximum profit, as evidenced in the graph below;

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Figure 2: Plot of returns of the prices of shares
Model
It is the most used measure of the risk associated with assets and investments. Volatility models
are very important when dealing with economic and financial models because of the high
fluctuations. In my case, the data was entered daily, showing how fluctuating it was. As a result,
GARCH was fitted to aid in understanding the fluctuations and making predictions on the
possibility of prices increasing or decreasing. The GARCH model of conditional variance was
fitted as GARCH (1, 1) and ARFIMA (1, 0, 1), the mean model, for the returns. The distribution
of the returns was normal; thus, the shape, skew, and lambda was not produced. As per the
Pearson adjusted goodness of fit statistics, the p-values are less than the alpha at 0.05 test of
significance; thus, we conclude that the model was statistically significant. Additionally, the
likelihood estimate was obtained to be 7425. 046. The high value of the likelihood estimate

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indicates the model’s goodness of fit. The optimal parameters of the model were as shown by
table 1 below;
Table 1: Optimal parameters of the GARCH model

The omega, alpha, and beta were statistically significant because the absolute t statistic values
were more than 2. Also, their p-values were less than the test of significance of 0.05. The alpha
value was computed as 0.0741 and the beta value as 0.8601. The alpha value is around 0.05;
thus, the market was stable. The beta was between 0.85 and 0.98; thus, the persistence was great.
The alpha value was low, and the beta value was high; thus, the GARCH volatilities had low vol-
of-vol. The stability statistic is 1.9968 indicating a stable market existed.
Heteroskedasticity rarely affects the parameters of Ordinary Least Square (OLS) estimates.
However, it has a biasness impact on the variance matrix. To reduce that, the robust standard
errors estimates were also computed as shown by table 2 below;
Table 2: Robust standard error estimates

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The estimates were not much different from those of the optimal parameters. Moving average
(MA) effects were statistically significant with robust standard error estimates. Omega, alpha,
and beta were also statistically significant.
The information criteria were also computed. The AIC was -5.21, and BIC was -5.19. The less
the information criteria, the better the model. The estimates are shown in table 3 below;
Table 3: The information criteria of the AGARCH model

The autocorrelation between the residuals was tested using the Ljung-Box. The hypothesis was
that;
H0: No serial correlation
H1: Serial correlation exists
The researcher obtained the p-value to be 0.873. That value is greater than the alpha at 0.05
significance test; thus, we retain the null hypothesis and conclude no serial correlation in the
residuals. The descriptive statistics of the residuals of the model were calculated. It had a range
of 0.004, a mean of 3.701E-04, and a median of 7.39E-05. Table 4 summarizes that.

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Table 4: Descriptive statistics of squared-residuals

Figure 3 below shows the squared residuals plotted with the conditional variance. The variance
was 2.054213e-06, and the mean was 3.701e-04. The variance is constant all through the series
of residuals.

Figure 3: Plot of squared residuals and conditional variance.

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Figure 4: The Q-Q plot of the squared residuals
Forecast
The predictions were made for a future period of 10. From the sixth value, the trend of the series
flattens. The values obtained for the series and sigma are shown respectively by the table 5
below;
Table 5: The projected values of the series and the sigma

Time Series Sigma
T1 0.00054 0.01538
T2

0.00062
3 0.0159

T3

0.00059
7 0.0159

T4

0.00060
1 0.01613

T5

0.00060
2 0.01623

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T6

0.00060
3 0.017

T7

0.00060
3 0.01673

T8

0.00060
3 0.01689

T9

0.00060
3 0.01705

T10

0.00060
3 0.0179

The variance of the residuals in the forecast was obtained and plotted as shown by figure 5;

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Figure 5: The sigma of the fitted projections

Conclusion
♣ The prices of the shares highly fluctuated, but the prices’ returns were constant over time.

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♣ The models fitted were GARCH (1, 1) and ARFIMA (1, 0, 1), meaning the
autoregressive factor was 1 and the moving average also 1. The model was statistically
significant, fitting the returns of the prices of shares.
♣ The residuals of returns were normally distributed with a mean and variance of almost
zero.
♣ There exist no autocorrelation between the residual values of the returns.
♣ The projection for the next 10 days indicates that the company will make a profit over
that period and has no probability of a loss. The residuals of the projected model were
also normally distributed with set mean and sigma values.

References

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Huskamp, H. A., Epstein, A. M., & Blumenthal, D. (2003). The impact of a national prescription
drug formulary on prices, market share, and spending: lessons for Medicare?. Health Affairs,
22(3), 149-158.
Blackman, S. C., Holden, K., & Thomas, W. A. (1994). Long-term relationships between
international share prices. Applied Financial Economics, 4(4), 297-304.
San-Juan-Rodriguez, A., Good, C. B., Heyman, R. A., Parekh, N., Shrank, W. H., & Hernandez,
I. (2019). Trends in prices, market share, and spending on self-administered disease-modifying
therapies for multiple sclerosis in Medicare Part D. JAMA neurology, 76(11), 1386-1390.
Choustova, O. (2008). Application of Bohmian mechanics to dynamics of prices of shares:
Stochastic model of Bohm–Vigier from properties of price trajectories. International Journal of
Theoretical Physics, 47(1), 252-260.
Wernerfelt, B. (1985). The dynamics of prices and market shares over the product life cycle.
Management Science, 31(8), 928-939.