|By Marketwired .||
|July 25, 2014 08:15 AM EDT||
WUJIANG, CHINA -- (Marketwired) -- 07/25/14 -- China Commercial Credit, Inc. (NASDAQ: CCCR), a microfinance company providing financial services to small-to-medium enterprises (SMEs), farmers and individuals in Jiangsu Province, today said it has made progress toward recovering a significant portion of the $5.4 million it paid in the first quarter of 2014 to lenders on behalf of 11 loan guarantee service customers who had borrowed funds from these lenders but defaulted on their loan repayments.
After determining that the majority of these defaulting borrowers had subsequently acquired the capability of repaying these funds, CCCR recovered approximately $0.7 million in cash from these borrowers and converted an additional $2.1 million of their debt into one-year loan notes payable by the borrowers directly to the company. All funds reclaimed via the above measures will be applied to CCCR's total capital available for use on its microfinance lending and loan guarantee businesses.
The company expects to announce that its second quarter payments to lenders on behalf of loan guarantee customers, although less than in the first quarter, will still amount to about $3.7 million. Of this total, CCCR has thus far recovered $1.1 million and converted an additional $1.6 million of their debt into one-year loan notes payable by the borrowers directly to the company. The financial adjustments related to these events will be included in the company's upcoming Q2 report.
About China Commercial Credit
China Commercial Credit (http://www.chinacommercialcredit.com), founded in 2008, provides business loans and loan guarantee services to more than 260 small-to-medium enterprises (SMEs), farmers and individuals in China's Jiangsu Province. Due to recent legislation and banking reform in China, these SMEs, farmers and individuals -- which historically had been excluded from borrowing funds from State-owned and commercial banks -- are now able to borrow money at competitive rates from microfinance lenders. According to 2012 data, SMEs account for eight of ten jobs in China and comprise nearly 60 percent of the nation's GDP.Utilizing proceeds of the recently completed secondary public offering, the company intends to commence its financial leasing business. It also recently launched a peer-to-peer online lending platform designed to pair SME borrowers with willing lenders.
Investors seeking additional information on CCCR or wishing to register for company Email Alerts may go to http://www.ir-site.com/china-commercial-credit/default.asp or the Asia IR/PR client page at http://asia-irpr.com/clients/cccr/.
This press release contains forward-looking statements within the meaning of United States securities laws. You should not rely upon forward-looking statements as predictions of future events. These forward-looking statements involve a number of risks, uncertainties (some of which are beyond our control) or other assumptions that may cause actual results or performance to be materially different from those expressed or implied by these forward-looking statements. Although we believe that the expectations reflected in the forward-looking statements are reasonable, we cannot guarantee future results, levels of activity, performance or achievements. Except as required by law, we undertake no obligation to update publicly any forward-looking statements for any reason after the date of this release to conform these statements to actual results or to changes in our expectations. You should review the factors described in the section entitled "Risk Factors" in our registration statement on Form S-1 filed with the SEC on May 7, 2014 and other documents we file from time to time with the SEC. We qualify all of our forward-looking statements by these cautionary statements.
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