An Old Dog Learns New Tricks: Novel Applications of Kernel Density Estimators on Two Financial Datasets

dc.contributor.advisorEnsor, Katherine B.en_US
dc.contributor.committeeMemberScott, David W.en_US
dc.creatorGinley, Matthew Clineen_US
dc.date.accessioned2019-05-17T13:30:53Zen_US
dc.date.available2019-05-17T13:30:53Zen_US
dc.date.created2017-12en_US
dc.date.issued2017-12-01en_US
dc.date.submittedDecember 2017en_US
dc.date.updated2019-05-17T13:30:53Zen_US
dc.description.abstractIn our first application, we contribute two nonparametric simulation methods for analyzing Leveraged Exchange Traded Fund (LETF) return volatility and how this dynamic is related to the underlying index. LETFs are constructed to provide the indicated leverage multiple of the daily total return on an underlying index. LETFs may perform as expected on a daily basis; however, fund issuers state there is no guarantee of achieving the multiple of the index return over longer time horizons. Most, if not all LETF returns data are difficult to model because of the extreme volatility present and limited availability of data. First, to isolate the effects of daily, leveraged compounding on LETF volatility, we propose an innovative method for simulating daily index returns with a chosen constraint on the multi-day period return. By controlling for the performance of the underlying index, the range of volatilities observed in a simulated sample can be attributed to compounding with leverage and the presence of tracking errors. Second, to overcome the limited history of LETF returns data, we propose a method for simulating implied LETF tracking errors while still accounting for their dependence on underlying index returns. This allows for the incorporation of the complete history of index returns in an LETF returns model. Our nonparametric methods are flexible-- easily incorporating any chosen number of days, leverage ratios, or period return constraints, and can be used in combination or separately to model any quantity of interest derived from daily LETF returns. For our second application, we tackle binary classification problems with extremely low class 1 proportions. These ``rare events'' problems are a considerable challenge, which is magnified when dealing with large datasets. Having a minuscule count of class 1 observations motivates the implementation of more sophisticated methods to minimize forecasting bias towards the majority class. We propose an alternative approach to established up-sampling or down-sampling algorithms driven by kernel density estimators to transform the class labels to continuous targets. Having effectively transformed the problem from classification to regression, we argue that under the assumption of a monotonic relationship between predictors and the target, approximations of the majority class are possible in a rare events setting with the use of simple heuristics. By significantly reducing the burden posed by the majority class, the complexities of minority class membership can be modeled more effectively using monotonically constrained nonparametric regression methods. Our approach is demonstrated on a large financial dataset with an extremely low class 1 proportion. Additionally, novel features engineering is introduced to assist in the application of the density estimator used for class label transformation.en_US
dc.format.mimetypeapplication/pdfen_US
dc.identifier.citationGinley, Matthew Cline. "An Old Dog Learns New Tricks: Novel Applications of Kernel Density Estimators on Two Financial Datasets." (2017) Diss., Rice University. <a href="https://hdl.handle.net/1911/105604">https://hdl.handle.net/1911/105604</a>.en_US
dc.identifier.urihttps://hdl.handle.net/1911/105604en_US
dc.language.isoengen_US
dc.rightsCopyright is held by the author, unless otherwise indicated. Permission to reuse, publish, or reproduce the work beyond the bounds of fair use or other exemptions to copyright law must be obtained from the copyright holder.en_US
dc.subjectRealized Volatilityen_US
dc.subjectExchange Traded Funden_US
dc.subjectNonparametric Density Estimationen_US
dc.subjectBankruptcy Modelingen_US
dc.subjectDistress Risken_US
dc.subjectRare Events Classificationen_US
dc.subjectMonotonic Regressionen_US
dc.titleAn Old Dog Learns New Tricks: Novel Applications of Kernel Density Estimators on Two Financial Datasetsen_US
dc.typeThesisen_US
dc.type.materialTexten_US
thesis.degree.departmentStatisticsen_US
thesis.degree.disciplineEngineeringen_US
thesis.degree.grantorRice Universityen_US
thesis.degree.levelDoctoralen_US
thesis.degree.majorComputational Financeen_US
thesis.degree.nameDoctor of Philosophyen_US
Files
Original bundle
Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
GINLEY-DOCUMENT-2017.pdf
Size:
6.24 MB
Format:
Adobe Portable Document Format
License bundle
Now showing 1 - 2 of 2
No Thumbnail Available
Name:
PROQUEST_LICENSE.txt
Size:
5.84 KB
Format:
Plain Text
Description:
No Thumbnail Available
Name:
LICENSE.txt
Size:
2.61 KB
Format:
Plain Text
Description: