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--[[ FISTA with backtracking line search

- `f`        : smooth function
- `g`        : non-smooth function
- `pl`       : minimizer of intermediate problem Q(x,y)
- `xinit`    : initial point
- `params`   : table of parameters (**optional**)
- `params.L`       : 1/(step size) for ISTA/FISTA iteration (0.1)
- `params.Lstep`   : step size multiplier at each iteration (1.5)
- `params.maxiter` : max number of iterations (50)
- `params.maxline` : max number of line search iterations per iteration (20)
- `params.errthres`: Error thershold for convergence check (1e-4)
- `params.doFistaUpdate` : true : use FISTA, false: use ISTA (true)
- `params.verbose` : store each iteration solution and print detailed info (false)

On output, `params` will contain these additional fields that can be reused.

- `params.L`       : last used L value will be written.

These are temporary storages needed by the algo and if the same params object is
passed a second time, these same storages will be used without new allocation.

- `params.xkm`     : previous iterarion point
- `params.y`       : fista iteration
- `params.ply`     : ply = pl(y - 1/L grad(f))

Returns the solution x and history of {function evals, number of line search ,...}

Algorithm is published in

    @article{beck-fista-09,
       Author = {Beck, Amir and Teboulle, Marc},
       Journal = {SIAM J. Img. Sci.},
       Number = {1},
       Pages = {183--202},
       Title = {A Fast Iterative Shrinkage-Thresholding Algorithm for Linear Inverse Problems},
       Volume = {2},
       Year = {2009}}
]]
function optim.FistaLS(f, g, pl, xinit, params)

   local params = params or {}
   local L = params.L or 0.1
   local Lstep = params.Lstep or 1.5
   local maxiter = params.maxiter or 50
   local maxline = params.maxline or 20
   local errthres = params.errthres or 1e-4
   local doFistaUpdate = params.doFistaUpdate
   local verbose = params.verbose

   -- temporary allocations
   params.xkm = params.xkm or torch.Tensor()
   params.y   = params.y   or torch.Tensor()
   params.ply = params.ply or torch.Tensor()
   local xkm = params.xkm  -- previous iteration
   local y   = params.y    -- fista iteration
   local ply = params.ply  -- soft shrinked y

   -- we start from all zeros
   local xk = xinit
   xkm:resizeAs(xk):zero()
   ply:resizeAs(xk):zero()
   y:resizeAs(xk):zero()

   local history = {} -- keep track of stuff
   local niter = 0    -- number of iterations done
   local converged = false  -- are we done?
   local tk = 1      -- momentum param for FISTA
   local tkp = 0


   local gy = g(y)
   local fval = math.huge -- fval = f+g
   while not converged and niter < maxiter do

      -- run through smooth function (code is input, input is target)
      -- get derivatives from smooth function
      local fy,gfy = f(y,'dx')
      --local gfy = f(y)

      local fply = 0
      local gply = 0
      local Q = 0

      ----------------------------------------------
      -- do line search to find new current location starting from fista loc
      local nline = 0
      local linesearchdone = false
      while not linesearchdone do
         -- take a step in gradient direction of smooth function
         ply:copy(y)
         ply:add(-1/L,gfy)

         -- and solve for minimum of auxiliary problem
         pl(ply,L)
         -- this is candidate for new current iteration
         xk:copy(ply)

         -- evaluate this point F(ply)
         fply = f(ply)

         -- ply - y
         ply:add(-1, y)
         -- <ply-y , \Grad(f(y))>
         local Q2 = gfy:dot(ply)
         -- L/2 ||beta-y||^2
         local Q3 = L/2 * ply:dot(ply)
         -- Q(beta,y) = F(y) + <beta-y , \Grad(F(y))> + L/2||beta-y||^2 + G(beta)
         Q = fy + Q2 + Q3

         if verbose then
            print(string.format('nline=%d L=%g fply=%g Q=%g fy=%g Q2=%g Q3=%g',nline,L,fply,Q,fy,Q2,Q3))
         end
         -- check if F(beta) < Q(pl(y),\t)
         if fply <= Q then --and Fply + Gply <= F then
            -- now evaluate G here
            linesearchdone = true
         elseif  nline >= maxline then
            linesearchdone = true
            xk:copy(xkm) -- if we can't find a better point, current iter = previous iter
            --print('oops')
         else
            L = L * Lstep
         end
         nline = nline + 1
      end
      -- end line search
      ---------------------------------------------

      ---------------------------------------------
      -- FISTA
      ---------------------------------------------
      if doFistaUpdate then
         -- do the FISTA step
         tkp = (1 + math.sqrt(1 + 4*tk*tk)) / 2
         -- x(k-1) = x(k-1) - x(k)
         xkm:add(-1,xk)
         -- y(k+1) = x(k) + (1-t(k)/t(k+1))*(x(k-1)-x(k))
         y:copy(xk)
         y:add( (1-tk)/tkp , xkm)
         -- store for next iterations
         -- x(k-1) = x(k)
         xkm:copy(xk)
      else
         y:copy(xk)
      end
      -- t(k) = t(k+1)
      tk = tkp
      fply = f(y)
      gply = g(y)
      if verbose then
	 print(string.format('iter=%d eold=%g enew=%g',niter,fval,fply+gply))
      end

      niter = niter + 1

      -- bookeeping
      fval = fply + gply
      history[niter] = {}
      history[niter].nline = nline
      history[niter].L  = L
      history[niter].F  = fval
      history[niter].Fply = fply
      history[niter].Gply = gply
      history[niter].Q  = Q
      params.L = L
      if verbose then
         history[niter].xk = xk:clone()
         history[niter].y  = y:clone()
      end

      -- are we done?
      if niter > 1 and math.abs(history[niter].F - history[niter-1].F) <= errthres then
         converged = true
	 xinit:copy(y)
         return y,history
      end

      if niter >= maxiter then
	 xinit:copy(y)
         return y,history
      end

      --if niter > 1 and history[niter].F > history[niter-1].F then
      --print(niter, 'This was supposed to be a convex function, we are going up')
      --converged = true
      --return xk,history
      --end
   end
   error('not supposed to be here')
end