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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

Kreditbedömning gentemot småföretag :  hur hanterar två lokala banker sin kreditgivning?

Abbas, Nermin, Jansson, Emelie, Mir Haghi Nejad, Masoumeh January 2011 (has links)
This essay aims to analyze based on the theory SEB and Nordea´s credit assessment process against small enterprises.
2

Credit risk & forward price models /

Gaspar, Raquel M., January 2006 (has links)
Diss. Stockholm : Handelshögskolan, 2006.
3

Kreditförluster hos storbankerna : En analys mellan kreditförluster och makroekonomiska faktorer

Sebenius, Ulf January 2015 (has links)
Denna uppsats undersöker sambandet mellan några makroekonomiska faktorer och de svenska storbankernas kreditförluster.  Att hitta indikatorer som kan ge tidiga signaler om kommande bankproblem är av stor vikt inte bara för banker utan för hela samhället. Anledningen är att till skillnad från de flesta andra branscher kan problem i banker störa samhällsviktiga funktioner. De kan få globala spridningseffekter och miljoner arbetstillfällen kan snabbt vara i fara när exempelvis betalningsfunktioner slutar fungera. Uppsatsen fokuserar på den verksamhet som bankerna har i Sverige. Bankernas kvartalsrapporter används som underlag och tidsperioden som ingår i uppsatsen är 2004 till 2014. Det betyder att konsekvenserna av den bankkris som startade i USA 2008 och som fick globala följdeffekter syns i underlagen för uppsatsen. Arbetslöshet, BNP, hushållens förtroende indikator, konsumentpris index och reporäntan är de makroekonomiska faktorer som används i uppsatsen. Underlagen för faktorerna är hämtade från SCB och Riksbanken. Den empiriska analys som används för att statistiskt bearbeta underlagen är regressionsmodellen OLS, minsta kvadrat metod.  Med hjälp av denna metod kan man fastlägga att det finns ett statistiskt signifikant samband mellan makroekonomiska faktorer och kreditförluster hos de svenska storbankerna.  I synnerhet kan man peka på ett negativt samband mellan BNP och kreditförluster. Dessutom kan man peka på positivt samband mellan arbetslöshet och kreditförluster.
4

Credit risk & forward price models

Gaspar, Raquel M. January 2006 (has links)
This thesis consists of three distinct parts. Part I introduces the basic concepts and the notion of general quadratic term structures (GQTS) essential in some of the following chapters. Part II focuses on credit risk models and Part III studies forward price term structure models using both the classical and the geometrical approach.  Part I is organized as follows. Chapter 1 is divided in two main sections. The first section presents some of the fundamental concepts which are a pre-requisite to the papers that follow. All of the concepts and results are well known and hence the section can be regarded as an introduction to notation and the basic principles of arbitrage theory. The second part of the chapter is of a more technical nature and its purpose is to summarize some key results on point processes or differential geometry that will be used later in the thesis. For finite dimensional factor models, Chapter 2 studies GQTS. These term structures include, as special cases, the affine term structures and Gaussian quadratic term structures previously studied in the literature. We show, however, that there are other, non-Gaussian, quadratic term structures and derive sufficient conditions for the existence of these GQTS for zero-coupon bond prices. On Part II we focus on credit risk models.   In Chapter 3 we propose a reduced form model for default that allows us to derive closed-form solutions for all the key ingredients in credit risk modeling: risk-free bond prices, defaultable bond prices (with and without stochastic recovery) and survival probabilities. We show that all these quantities can be represented in general exponential quadratic forms, despite the fact that the intensity of default is allowed to jump producing shot-noise effects. In addition, we show how to price defaultable digital puts, CDSs and options on defaultable bonds. Further on, we study a model for portfolio credit risk that considers both firm-specific and systematic risk. The model generalizes the attempt of Duffie and Garleanu (2001). We find that the model produces realistic default correlation and clustering effects. Next, we show how to price CDOs, options on CDOs and how to incorporate the link to currently proposed credit indices. In Chapter 4 we start by presenting a reduced-form multiple default type of model and derive abstract results on the influence of a state variable $X$ on credit spreads when both the intensity and the loss quota distribution are driven by $X$. The aim is to apply the results to a real life situation, namely, to the influence of macroeconomic risks on the term structure of credit spreads. There is increasing support in the empirical literature for the proposition that both the probability of default (PD) and the loss given default (LGD) are correlated and driven by macroeconomic variables. Paradoxically, there has been very little effort, from the theoretical literature, to develop credit risk models that would take this into account. One explanation might be the additional complexity this leads to, even for the ``treatable'' default intensity models. The goal of this paper is to develop the theoretical framework necessary to deal with this situation and, through numerical simulation, understand the impact of macroeconomic factors on the term structure of credit spreads. In the proposed setup, periods of economic depression are both periods of higher default intensity and lower recovery, producing a business cycle effect. Furthermore, we allow for the possibility of an index volatility that depends negatively on the index level and show that, when we include this realistic feature, the impacts on the credit spread term structure are emphasized. Part III studies forward price term structure models. Forward prices differ from futures prices in stochastic interest rate settings and become an interesting object of study in their own right. Forward prices with different maturities are martingales under different forward measures. This mathematical property implies that the term structure of forward prices is always linked to the term structure of bond prices, and this dependence makes forward price term structure models relatively harder to handle. For finite dimensional factor models, Chapter 5 applies the concept of GQTS to the term structure of forward prices. We show how the forward price term structure equation depends on the term structure of bond prices. We then exploit this connection and show that even in quadratic short rate settings we can have affine term structures for forward prices. Finally, we show how the study of futures prices is naturally embedded in the study of forward prices, that the difference between the two term structures may be deterministic in some (non-trivial) stochastic interest rate settings. In Chapter 6 we study a fairly general Wiener driven model for the term structure of forward prices. The model, under a fixed martingale measure, $\Q$, is described by using two infinite dimensional stochastic differential equations (SDEs). The first system is a standard HJM model for (forward) interest rates, driven by a multidimensional Wiener process $W$. The second system is an infinite SDE for the term structure of forward prices on some specified underlying asset driven by the same $W$. Since the zero coupon bond volatilities will enter into the drift part of the SDE for these forward prices, the interest rate system is needed as input to the forward price system. Given this setup, we use the Lie algebra methodology of Bj\o rk et al. to investigate under what conditions, on the volatility structure of the forward prices and/or interest rates, the inherently (doubly) infinite dimensional SDE for forward prices can be realized by a finite dimensional Markovian state space model. / Diss. Stockholm : Handelshögskolan, 2006
5

Artificiell Intelligens för riskhantering : En studie om användningen av ny teknologi på de svenska bankernas kreditbedömningar

Salloum, Alexander, Yousef, Johan January 2024 (has links)
Background: Managing credit risks is an integral part of the banking sector and is crucial for banks’ success. Effective risk management ensures stable and profitable operations, addressing challenges like information asymmetry between lenders and borrowers. To combat these challenges, banks are shifting from manual methods to automated processes in credit assessment and credit risk management.Purpose: The purpose of the study was to investigate how the use of AI has contributed to credit risk management and the handling of risk assessments within Swedish banks. Additionally, the study explored the factors driving the use of AI in this area.  Methodology: An abductive research approach was employed within the framework of a qualitative research method. Four banks were included in the study: two major banks and two niche banks. Semi structured interviews provided the primary data for the study, while secondary data, such as articles and literature, were used to support and explain the findings during the analysis and discussion.  Theory: The study was based on two models and the theory of information asymmetry. The first model focuses on the credit assessment process, while the second addresses critical success factors for the implementation of AI. The theory of information asymmetry consists of moral hazard and adverse selection. Conclusions: The study’s conclusion indicated that AI has contributed to increased efficiency and precision in credit risk management. Furthermore, AI supports addressing information asymmetry by automating data collection, analysis, and fraud detection. The study concludes that effective AI usage necessitates a balanced combination of management support, strategic vision, organizational culture, and structure.

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