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A Comprehensive Survey on Enterprise Financial Risk Analysis: Problems, Methods, Spotlights and Applications. (2022). Du, Huaming ; Zhao, YU.
In: Papers.
RePEc:arx:papers:2211.14997.

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    RePEc:cbu:jrnlec:y:2017:v:1:p:5-13.

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  33. Planificarea financiarǎ pentru decizii asupra antreprenoriatului - Partea întâi. (2016). Dumitriu, Ramona ; Stefanescu, Rzvan.
    In: MPRA Paper.
    RePEc:pra:mprapa:74829.

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  34. Does Career Risk Deter Potential Entrepreneurs?. (2016). Gottlieb, Joshua ; Townsend, Richard R ; Xu, Ting.
    In: NBER Working Papers.
    RePEc:nbr:nberwo:22446.

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  35. Entrepreneurship and Income Inequality. (2016). Wennberg, Karl ; Korpi, Martin ; Halvarsson, Daniel.
    In: Ratio Working Papers.
    RePEc:hhs:ratioi:0281.

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  36. The impact of banking deregulation on inbound foreign direct investment: Transaction-level evidence from the United States. (2016). Leblebicioglu, Asli ; Kandilov, Ivan ; Petkova, Neviana ; Leblebiciolu, Asli.
    In: Journal of International Economics.
    RePEc:eee:inecon:v:100:y:2016:i:c:p:138-159.

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  37. Intergenerational Fairness and the Crowding Out Effects of Well-Intended Environmental Policies. (2016). Hunt, Richard ; Fund, Bret R.
    In: Journal of Management Studies.
    RePEc:bla:jomstd:v:53:y:2016:i:5:p:878-910.

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  38. House Money and Entrepreneurship. (2015). Pekkala Kerr, Sari ; Nanda, Ramana.
    In: Harvard Business School Working Papers.
    RePEc:hbs:wpaper:15-069.

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  39. The effect of product market competition on job security. (2015). Aparicio, Ainhoa ; Aparicio-Fenoll, Ainhoa .
    In: Labour Economics.
    RePEc:eee:labeco:v:35:y:2015:i:c:p:145-159.

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  40. Mating competition and entrepreneurship. (2015). Zhang, Xiaobo ; Chang, Simon .
    In: Journal of Economic Behavior & Organization.
    RePEc:eee:jeborg:v:116:y:2015:i:c:p:292-309.

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  41. Bank market power, factor reallocation, and aggregate growth. (2015). Noth, Felix ; Koetter, Michael ; Inklaar, Robert.
    In: Journal of Financial Stability.
    RePEc:eee:finsta:v:19:y:2015:i:c:p:31-44.

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  42. Environmental policies and risk finance in the green sector: Cross-country evidence. (2015). Menon, Carlo ; Criscuolo, Chiara.
    In: Energy Policy.
    RePEc:eee:enepol:v:83:y:2015:i:c:p:38-56.

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  43. What if Firms Could Borrow More? Evidence from a Natural Experiment. (2015). Thomann, Christian ; Martinsson, Gustav ; Brown, James R.
    In: CESifo Working Paper Series.
    RePEc:ces:ceswps:_5458.

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  44. Credit constraints, fragmentation, and inter-firm transactions. (2014). Marjit, Sugata ; Ray, Moushakhi ; Yang, Lei.
    In: Asia-Pacific Journal of Accounting & Economics.
    RePEc:taf:raaexx:v:21:y:2014:i:1:p:94-103.

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  45. Financial Issues Facing Entrepreneurs. (2014). Bawaneh, Shamsi S ; Al-Kayyali, Asmaaa .
    In: International Journal of Empirical Finance.
    RePEc:rss:jnljef:v3i2p6.

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  46. Finance and employment: Evidence from U.S. banking reforms. (2014). Boustanifar, Hamid.
    In: Journal of Banking & Finance.
    RePEc:eee:jbfina:v:46:y:2014:i:c:p:343-354.

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  47. Bank Competition, Borrower Competition and Interest Rates. (2014). Bellon, Carlos.
    In: INDEM - Working Paper Business Economic Series.
    RePEc:cte:idrepe:id-14-03.

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  48. Financial Development, Entrepreneurship, and Job Satisfaction. (2012). Bianchi, Milo.
    In: Post-Print.
    RePEc:hal:journl:halshs-00670031.

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  49. Financial Development, Entrepreneurship, and Job Satisfaction. (2012). Bianchi, Milo.
    In: Post-Print.
    RePEc:hal:journl:hal-01629748.

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  50. Local economic effects of a government-owned depository institution: Evidence from a natural experiment in Japan. (2012). Imai, Masami.
    In: Journal of Financial Intermediation.
    RePEc:eee:jfinin:v:21:y:2012:i:1:p:1-22.

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  51. Financial Development, Entrepreneurship, and Job Satisfaction. (2012). Bianchi, Milo.
    In: Economics Papers from University Paris Dauphine.
    RePEc:dau:papers:123456789/5067.

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  52. Who Creates Jobs?. (2011). O'Connell, Stephen ; Kerr, William ; Ghani, Ejaz.
    In: World Bank Other Operational Studies.
    RePEc:wbk:wboper:10072.

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  53. Migrant Entrepreneurs and Credit Constraints under Labour Market Discrimination. (2011). Meng, Xin ; Kong, Tao Sherry ; Frijters, Paul.
    In: IZA Discussion Papers.
    RePEc:iza:izadps:dp5967.

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  54. The Bayh-Dole Act and scientist entrepreneurship. (2011). Audretsch, David ; Aldridge, T..
    In: Research Policy.
    RePEc:eee:respol:v:40:y:2011:i:8:p:1058-1067.

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  55. Financial Innovation and Endogenous Growth. (2011). Michalopoulos, Stelios ; Levine, Ross ; Laeven, Luc.
    In: Economics Working Papers.
    RePEc:ads:wpaper:0097.

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  56. (Inter-state) Banking and (Inter-state) Trade: Does Real Integration Follow Financial Integration?. (2010). Michalski, Tomasz ; Örs, Evren, .
    In: CEPR Discussion Papers.
    RePEc:cpr:ceprdp:7963.

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  57. Deep Financial Integration and Volatility. (2010). Volosovych, Vadym ; Sorensen, Bent ; Kalemli-Ozcan, Sebnem.
    In: CEPR Discussion Papers.
    RePEc:cpr:ceprdp:7784.

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  58. Regulatory Reform After the Crisis: Opportunities and Pitfalls. (2010). Beck, Thorsten.
    In: CEPR Discussion Papers.
    RePEc:cpr:ceprdp:7733.

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  59. Big Bad Banks? The Winners and Losers From Bank Deregulation in the United States. (2009). Levine, Ross ; Levkov, A ; Beck, T. H. L., .
    In: Other publications TiSEM.
    RePEc:tiu:tiutis:d02bd971-3f22-46fb-82a9-c23e2f661e0a.

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  60. Big Bad Banks? The Winners and Losers From Bank Deregulation in the United States. (2009). Levine, Ross ; Beck, Thorsten ; Levkov, A. ; Beck, T. H. L., .
    In: Discussion Paper.
    RePEc:tiu:tiucen:d02bd971-3f22-46fb-82a9-c23e2f661e0a.

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  61. Heterogeneity in the effect of regulation on entrepreneurship and entry size. (2009). Lusardi, Annamaria ; Ardagna, Silvia .
    In: NBER Working Papers.
    RePEc:nbr:nberwo:15510.

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  62. Financial Innovation and Endogenous Growth. (2009). Michalopoulos, Stelios ; Levine, Ross ; Laeven, Luc.
    In: NBER Working Papers.
    RePEc:nbr:nberwo:15356.

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  63. Financial Innovation and Endogenous Growth. (2009). Michalopoulos, Stelios ; Levine, Ross ; Laeven, Luc.
    In: CEPR Discussion Papers.
    RePEc:cpr:ceprdp:7465.

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