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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

Der Versicherungsbetrug : [Paragraph] 265 St.-G.-B. /

Krekeler, Erich, January 1912 (has links)
Thesis (doctoral)--Universität Heidelberg, 1912. / Includes bibliographical references (p. [vii]-viii).
2

Die Haftung des Versicherers gegenüber dem durch betrügerische Vorspiegelungen des Vermittlungsagenten zum Vertragsabschluss verlockten Versicherungsnehmer /

Biedermann, Fedor. January 1910 (has links)
Thesis (doctoral)--Universität Breslau.
3

Die Strafbestimmungen im Versicherungsgesetz für Angestellte vom 20. Dezember 1911 /

Brixle, Alfred. January 1913 (has links)
Thesis (doctoral)--Friedrich-Alexander-Universität zu Erlangen.
4

Die vorsätzliche Herbeiführung des Versicherungsfalles in der privaten Unfallversicherung : Beweislast- und Beweiswürdigungsprobleme dargestellt an der Rechtsprechungspraxis zu [Paragraph] 2 Abs. 1 AUB /

Kirsch, Christoph. January 1972 (has links)
Thesis (doctoral)--Universität zu Köln, 1972. / Includes bibliographical references (p. [viii]-xx).
5

Arglistiges Verhalten in der Personen-Versicherung /

Lomen, Heinrich, January 1933 (has links)
Thesis (doctoral)--Universität Marburg, 1933. / Includes bibliographical references (p. vi-ix).
6

Das Rückgriffsrecht des Haftpflichtversicherers gegen den mitbeteiligten Schadenstifter /

Maassen, Matthias. January 1941 (has links)
Thesis (doctoral)--Universität Köln.
7

Supervised and unsupervised PRIDIT for active insurance fraud detection

Ai, Jing, January 1900 (has links)
Thesis (Ph. D.)--University of Texas at Austin, 2008. / Vita. Includes bibliographical references.
8

Supervised and unsupervised PRIDIT for active insurance fraud detection

Ai, Jing, 1981- 31 August 2012 (has links)
This dissertation develops statistical and data mining based methods for insurance fraud detection. Insurance fraud is very costly and has become a world concern in recent years. Great efforts have been made to develop models to identify potentially fraudulent claims for special investigations. In a broader context, insurance fraud detection is a classification task. Both supervised learning methods (where a dependent variable is available for training the model) and unsupervised learning methods (where no prior information of dependent variable is available for use) can be potentially employed to solve this problem. First, an unsupervised method is developed to improve detection effectiveness. Unsupervised methods are especially pertinent to insurance fraud detection since the nature of insurance claims (i.e., fraud or not) is very costly to obtain, if it can be identified at all. In addition, available unsupervised methods are limited and some of them are computationally intensive and the comprehension of the results may be ambiguous. An empirical demonstration of the proposed method is conducted on a widely used large dataset where labels are known for the dependent variable. The proposed unsupervised method is also empirically evaluated against prevalent supervised methods as a form of external validation. This method can be used in other applications as well. Second, another set of learning methods is then developed based on the proposed unsupervised method to further improve performance. These methods are developed in the context of a special class of data mining methods, active learning. The performance of these methods is also empirically evaluated using insurance fraud datasets. Finally, a method is proposed to estimate the fraud rate (i.e., the percentage of fraudulent claims in the entire claims set). Since the true nature of insurance claims (and any level of fraud) is unknown in most cases, there has not been any consensus on the estimated fraud rate. The proposed estimation method is designed based on the proposed unsupervised method. Implemented using insurance fraud datasets with the known nature of claims (i.e., fraud or not), this estimation method yields accurate estimates which are superior to those generated by a benchmark naïve estimation method. / text
9

Producer opportunism and environmental impacts of crop insurance and fertilizer decisions

Walters, Cory G. January 2008 (has links) (PDF)
Thesis (Ph. D.)--Washington State University, December 2008. / Title from PDF title page (viewed on Apr. 29, 2010). "School of Economic Sciences." Includes bibliographical references.

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