Month Sales ($) January 12,354 February 13,657 March 14,536 April 14,536 May 16,590 June 19,790 July 17,987 August 18,657 September 19,765 October 18,678 November 20,678 December 23,675 Use simple linear regression analysis to forecast the sales for next month? Round your answer to two decimal places.
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