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  • Search: subject:"Weighted logistic regression"
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Year of publication
Subject
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Regression analysis 4 Regressionsanalyse 4 weighted logistic regression 3 Bank lending 2 Bankruptcy prediction 2 Credit rating 2 Kreditgeschäft 2 Kreditwürdigkeit 2 Lasso 2 Theorie 2 Theory 2 corporate bank debt 2 credit risk 2 Alternative credit scoring 1 Anlageverhalten 1 Asia 1 Asian 1 Asians 1 Asiaten 1 Asien 1 Behavioral finance 1 Behavioural finance 1 China 1 Click farming 1 Cluster analysis 1 Clusteranalyse 1 Credit risk 1 Credit scoring 1 Ethnic group 1 Ethnische Gruppe 1 Forecasting model 1 Health insurance 1 Insolvency 1 Insolvenz 1 Krankenversicherung 1 Kreditrisiko 1 Locally weighted logistic regression 1 Logit model 1 Logit-Modell 1 MBTI 1
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Online availability
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Free 4 CC license 2 Undetermined 1
Type of publication
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Article 3 Book / Working Paper 2
Type of publication (narrower categories)
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Article in journal 3 Aufsatz in Zeitschrift 3 Working Paper 2 Arbeitspapier 1 Graue Literatur 1 Non-commercial literature 1
Language
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English 5
Author
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Hjelseth, Ida Nervik 2 Raknerud, Arvid 2 Vatne, Bjørn Helge 2 Gong, Shaoqing 1 Jiang, Cuixia 1 Ozodiegwu, Ifeoma 1 Sohn, So Young 1 Wang, Kesheng 1 Wang, Nianshuo 1 Woo, Hyunwoo 1 Xie, Xin 1 Xu, Qifa 1 Zhu, Jun 1
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Published in...
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Electronic commerce research 1 Financial innovation : FIN 1 Quantitative finance and economics 1 Working Paper 1 Working paper / Norges Bank 1
Source
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ECONIS (ZBW) 4 EconStor 1
Showing 1 - 5 of 5
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A bankruptcy probability model for assessing credit risk on corporate loans with automated variable selection
Hjelseth, Ida Nervik; Raknerud, Arvid; Vatne, Bjørn Helge - 2022
We propose an econometric model for predicting the share of bank debt held by bankrupt firms by combining a novel set of firm-level financial variables and macroeconomic indicators. Our firm-level data include payment remarks in the form of debt collections from private agencies and attachments...
Persistent link: https://www.econbiz.de/10014551720
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Cover Image
A bankruptcy probability model for assessing credit risk on corporate loans with automated variable selection
Hjelseth, Ida Nervik; Raknerud, Arvid; Vatne, Bjørn Helge - 2022
We propose an econometric model for predicting the share of bank debt held by bankrupt firms by combining a novel set of firm-level financial variables and macroeconomic indicators. Our firm-level data include payment remarks in the form of debt collections from private agencies and attachments...
Persistent link: https://www.econbiz.de/10013337991
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Cover Image
A credit scoring model based on the Myers-Briggs type indicator in online peer-to-peer lending
Woo, Hyunwoo; Sohn, So Young - In: Financial innovation : FIN 8 (2022), pp. 1-19
each job category. Applying the distance in this space to Lending Club data, we used locally weighted logistic regression …
Persistent link: https://www.econbiz.de/10013272683
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Multivariate analyses of social-behavioral factors with health insurance coverage among Asian Americans in California
Wang, Nianshuo; Ozodiegwu, Ifeoma; Gong, Shaoqing; … - In: Quantitative finance and economics 3 (2019) 3, pp. 473-489
Persistent link: https://www.econbiz.de/10012176571
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Dissecting click farming on the Taobao platform in China via PU learning and weighted logistic regression
Jiang, Cuixia; Zhu, Jun; Xu, Qifa - In: Electronic commerce research 22 (2022) 1, pp. 157-176
Persistent link: https://www.econbiz.de/10013169432
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