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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Essays in Finance and Macroeconomics: Household Financial Obligations and the Equity Premium

January 2017 (has links)
abstract: This dissertation is a collection of three essays relating household financial obligations to asset prices. Financial obligations include both debt payments and other financial commitments. In the first essay, I investigate how household financial obligations affect the equity premium. I modify the standard Mehra-Prescott (1985) consumption-based asset pricing model to resolve the equity risk premium puzzle. I focus on two channels: the preference channel and the borrowing constraints channel. Under reasonable parameterizations, my model generates equity risk premiums similar in magnitudes to those observed in U.S. data. Furthermore, I show that relaxing the borrowing constraint shrinks the equity risk premium. In the Second essay, I test the predictability of excess market returns using the household financial obligations ratio. I show that deviations in the household financial obligations ratio from its long-run mean is a better forecaster of future market returns than alternative prediction variables. The results remain significant using either quarterly or annual data and are robust to out-of-sample tests. In the third essay, I investigate whether the risk associated with household financial obligations is an economy-wide risk with the potential to explain fluctuations in the cross-section of stock returns. The multifactor model I propose, is a modification of the capital asset pricing model that includes the financial obligations ratio as a ``conditioning down" variable. The key finding is that there is an aggregate hedging demand for securities that pay off in periods characterized by higher levels of financial obligations ratios. The consistent pricing of financial obligations risk with a negative risk premium suggests that the financial obligations ratio acts as a state variable. / Dissertation/Thesis / Doctoral Dissertation Economics 2017
2

[en] INTEREST RATE AS AN ADDITIONAL FACTOR TO EXPLAIN STOCKS RETURNS / [pt] JUROS COMO VARIÁVEL EXPLICATIVA PARA O RETORNO DE AÇÕES

CONRADO DE GODOY GARCIA 02 March 2018 (has links)
[pt] Este trabalho tem como objetivo explorar o benefício da inclusão de um novo fator relacionado a juros aos principais modelos de análise do cross-section dos retornos de ações, como o CAPM e o modelo de 3 fatores de Fama & French. O foco em especial é sobre a anomalia dos maiores retornos ajustados ao risco das estratégias de spread entre ações de baixo e alto beta de mercado, que também pode ser visto nos spreads entre ações de baixa e alta volatilidade. A motivação para inclusão deste fator vem da teoria de que o bom desempenho destas estratégias é simplesmente uma exposição a taxa de juros, não capturada pelos modelos usuais. Apesar da literatura apontar que as taxas de juros afetam diversas variáveis econômicas, a maior parte dos trabalhos de análise do cross-section dos retornos de ações é conduzida através de modelos de fatores compostos apenas por ações, sem fatores ou ativos diretamente relacionados a mudança da taxa de juros. A análise é feita com modelos lineares de fatores para o mercado acionário norte-americano entre 1976 até 2015. / [en] The literature shows that interest rates influence different economic variables such as consumption willingness, investment or expected asset returns. Notwithstanding, most works dealing with cross-sectional analysis of stock returns use only stock-based factor models disregarding the effects of interest rate movements. In this work, we explore the benefits of incrementing the traditional cross-sectional analysis (CAPM and Fama-French 3-factor model) with a new factor characterizing interest rate evolution over time. With this new factor, our model aims at better explaining stock return dispersion as well as a known anomaly of high risk-adjusted returns for low-volatility stock portfolios. Empirical analysis of linear factor models are carried out using US stock data using the Kenneth French database and the new factor is constructed using the US Aggregate do Barclays index that measures the return of low-risk assets.
3

Cross-Section of Stock Returns: : Conditional vs. Unconditional and Single Factor vs. Multifactor Models

Vosilov, Rustam, Bergström, Nicklas January 2010 (has links)
<p>The cross-sectional variation of stock returns used to be described by the Capital Asset Pricing Model until the early 90‟s. Anomalies, such as, book-to-market effect and small firm effect undermined CAPM‟s ability to explain stock returns and Fama & French (1992) have shown that simple firm attributes, like, firm size and book-to-market value can explain the returns far better than Beta. Following Fama & French many other researchers examine the explanatory powers of CAPM and other asset pricing models. However, most of those studies use US data. There are some researches done in different countries than US, however more out-of-sample studies need to be conducted.</p><p>To our knowledge there are very few studies using the Swedish data and this thesis contributes to that small pool of studies. Moreover, the studies testing the CAPM use the unconditional version of the model. There are some papers suggesting the use of a conditional CAPM that would exhibit better explanatory powers than the unconditional CAPM. Different ways of conditioning the CAPM have been proposed, but one that we think is the least complex and possible to make use of in the business world is the dual-beta model. This conditional CAPM assumes a different relationship between beta and stock returns during the up markets and down markets. Furthermore, the model has not thoroughly been tested outside the US. Our study is the first to use the dual-beta model in Sweden. In addition, the momentum effect has lately been given some attention and Fama & French‟s (1993) three factor model has not been able to explain the abnormal returns related to that anomaly. We test the Fama & French three factor model, CAPM and Carhart‟s four factor model‟s explanatory abilities of the momentum effect using Swedish stock returns. Ultimately, our aim is to find the best model that describes stock return cross-section on the Stockholm Stock Exchange.</p><p>We use returns of all the non-financial firms listed on Stockholm Stock Exchange between September, 1997 and April, 2010. The number of companies included in our time sample is 366. The results of our tests indicate that the small firm effect, book-to-market effect and the momentum effect are not present on the Stockholm Stock Exchange. Consequently, the CAPM emerges as the one model that explains stock return cross-section better than the other models suggesting that Beta is still a proper measure of risk. Furthermore, the conditional version of CAPM describes the stock return variation far better than the unconditional CAPM. This implies using different Betas to estimate risk during up market conditions and down market conditions.</p>
4

Cross-Section of Stock Returns: : Conditional vs. Unconditional and Single Factor vs. Multifactor Models

Vosilov, Rustam, Bergström, Nicklas January 2010 (has links)
The cross-sectional variation of stock returns used to be described by the Capital Asset Pricing Model until the early 90‟s. Anomalies, such as, book-to-market effect and small firm effect undermined CAPM‟s ability to explain stock returns and Fama &amp; French (1992) have shown that simple firm attributes, like, firm size and book-to-market value can explain the returns far better than Beta. Following Fama &amp; French many other researchers examine the explanatory powers of CAPM and other asset pricing models. However, most of those studies use US data. There are some researches done in different countries than US, however more out-of-sample studies need to be conducted. To our knowledge there are very few studies using the Swedish data and this thesis contributes to that small pool of studies. Moreover, the studies testing the CAPM use the unconditional version of the model. There are some papers suggesting the use of a conditional CAPM that would exhibit better explanatory powers than the unconditional CAPM. Different ways of conditioning the CAPM have been proposed, but one that we think is the least complex and possible to make use of in the business world is the dual-beta model. This conditional CAPM assumes a different relationship between beta and stock returns during the up markets and down markets. Furthermore, the model has not thoroughly been tested outside the US. Our study is the first to use the dual-beta model in Sweden. In addition, the momentum effect has lately been given some attention and Fama &amp; French‟s (1993) three factor model has not been able to explain the abnormal returns related to that anomaly. We test the Fama &amp; French three factor model, CAPM and Carhart‟s four factor model‟s explanatory abilities of the momentum effect using Swedish stock returns. Ultimately, our aim is to find the best model that describes stock return cross-section on the Stockholm Stock Exchange. We use returns of all the non-financial firms listed on Stockholm Stock Exchange between September, 1997 and April, 2010. The number of companies included in our time sample is 366. The results of our tests indicate that the small firm effect, book-to-market effect and the momentum effect are not present on the Stockholm Stock Exchange. Consequently, the CAPM emerges as the one model that explains stock return cross-section better than the other models suggesting that Beta is still a proper measure of risk. Furthermore, the conditional version of CAPM describes the stock return variation far better than the unconditional CAPM. This implies using different Betas to estimate risk during up market conditions and down market conditions.

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