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In this thesis I examine the opportunities and challenges faced by the community banks in China. Rooted in the local communities, community banks generally focus on serving the local residents, farmers, and micro and small business enterprises (MSBE) through relationship building. Although community banks tend to be small relative to

In this thesis I examine the opportunities and challenges faced by the community banks in China. Rooted in the local communities, community banks generally focus on serving the local residents, farmers, and micro and small business enterprises (MSBE) through relationship building. Although community banks tend to be small relative to the other financial institutions, their unique market positions and business strategies have helped them to survive the competition and secure some market shares. Thus, it is important to understand the business strategies of community banks and to explore their future business opportunities and challenges.

I first provide a brief overview about the importance of local communities, community economy, and community banking, on the basis of an analysis about mismatch in the demand and supply of community financial services due to information asymmetry. Next, I review and analyze how commercial banks have utilized different types of information in their operations. I classify the information used by commercial banks into different categories and discuss their importance to the operations of commercial banks. After that, I conduct a case analysis to illustrate the role of non-financial information in the development of community banks’ business strategy. I conclude this thesis with a discussion of how community banks can better utilize data analysis to develop their core competencies in the era of “Big Data”.
ContributorsHou, Funing (Author) / Li, Feng (Thesis advisor) / Wang, Jiang (Thesis advisor) / Gu, Bin (Committee member) / Arizona State University (Publisher)
Created2015
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Description
This paper quantitatively analyses the relation between the return of private

seasoned equity offerings and variables of market and firm characteristics in China Ashare

market. A multiple-factor linear regression model is constructed to estimate this

relation and the result canhelp investors to determine the future return of private

placement stocks.

In this paper, I first

This paper quantitatively analyses the relation between the return of private

seasoned equity offerings and variables of market and firm characteristics in China Ashare

market. A multiple-factor linear regression model is constructed to estimate this

relation and the result canhelp investors to determine the future return of private

placement stocks.

In this paper, I first review past theories about private placement stocks, including how

the large shareholder participation, the discount of private offerings, the firm

characteristics, and the investment on firm value will affect the return of private

offerings.

According to the past literature, I propose four main factors that may affect the

return of private placement. They are the large shareholders participation in private

placement; the discount that private placement could offer; the characteristics of the

companies that offer a private placement and the intrinsic value of such companies. I

adopt statistic and correlational analysis to test the impact of each factor. Then,

according to this single-factor analysis, I set up a multiple-factor linear regression model

on private seasoned equity offerings return in Chapter Four.

In the last two chapters, I apply this quantitative model to other fields. I use this

model to testify current financial products of private placement and develop investmen

strategies on stocks with private seasoned equity offerings in secondary market. My

quantitative strategy is useful according to the result of setback test.
ContributorsCao, Xuan (Author) / Pei, Ker-Wei (Thesis advisor) / Li, Feng (Thesis advisor) / Qian, Jun (Committee member) / Arizona State University (Publisher)
Created2017