|By Marketwired .||
|March 17, 2014 03:14 PM EDT||
CALGARY, ALBERTA -- (Marketwired) -- 03/17/14 -- Wangton Capital Corp. (the "Corporation") (TSX VENTURE:WT.P), a capital pool company, announces that it has received the required shareholder and TSX Venture Exchange (the "TSXV") approvals to transfer the Corporation's listing to the NEX board of the TSXV ("NEX") as a result of the Corporation's failure to complete a Qualifying Transaction (as defined in the policies of the TSXV) within the time period required by the TSXV. The transfer to NEX will be effective opening on Wednesday, March 19, 2014.
Also, the Corporation has received the required shareholder approval and has cancelled an aggregate of 220,000 Common Shares of the Corporation, representing one half of the seed Common Shares purchased by Non-Arms' Length Parties (as defined in the policies of the TSXV) of the Corporation, which shares were cancelled pursuant to the policies of the TSXV as a result of the Corporation's failure to complete a Qualifying Transaction within the time period required by the TSXV.
NEITHER THE TSX VENTURE EXCHANGE NOR ITS REGULATION SERVICES PROVIDER (as that term is defined in the Policies of the TSX Venture Exchange) ACCEPTS RESPONSIBILITY FOR THE ADEQUACY OR ACCURACY OF THIS RELEASE.
Wangton Capital Corp.
Zahir (Zip) Dhanani
President and Chief Executive Officer
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