| import numpy as np |
|
|
| """ |
| # 2023 - ported from minpack2.dcsrch, dcstep (Fortran) to Python |
| c MINPACK-1 Project. June 1983. |
| c Argonne National Laboratory. |
| c Jorge J. More' and David J. Thuente. |
| c |
| c MINPACK-2 Project. November 1993. |
| c Argonne National Laboratory and University of Minnesota. |
| c Brett M. Averick, Richard G. Carter, and Jorge J. More'. |
| """ |
|
|
| |
|
|
|
|
| class DCSRCH: |
| """ |
| Parameters |
| ---------- |
| phi : callable phi(alpha) |
| Function at point `alpha` |
| derphi : callable phi'(alpha) |
| Objective function derivative. Returns a scalar. |
| ftol : float |
| A nonnegative tolerance for the sufficient decrease condition. |
| gtol : float |
| A nonnegative tolerance for the curvature condition. |
| xtol : float |
| A nonnegative relative tolerance for an acceptable step. The |
| subroutine exits with a warning if the relative difference between |
| sty and stx is less than xtol. |
| stpmin : float |
| A nonnegative lower bound for the step. |
| stpmax : |
| A nonnegative upper bound for the step. |
| |
| Notes |
| ----- |
| |
| This subroutine finds a step that satisfies a sufficient |
| decrease condition and a curvature condition. |
| |
| Each call of the subroutine updates an interval with |
| endpoints stx and sty. The interval is initially chosen |
| so that it contains a minimizer of the modified function |
| |
| psi(stp) = f(stp) - f(0) - ftol*stp*f'(0). |
| |
| If psi(stp) <= 0 and f'(stp) >= 0 for some step, then the |
| interval is chosen so that it contains a minimizer of f. |
| |
| The algorithm is designed to find a step that satisfies |
| the sufficient decrease condition |
| |
| f(stp) <= f(0) + ftol*stp*f'(0), |
| |
| and the curvature condition |
| |
| abs(f'(stp)) <= gtol*abs(f'(0)). |
| |
| If ftol is less than gtol and if, for example, the function |
| is bounded below, then there is always a step which satisfies |
| both conditions. |
| |
| If no step can be found that satisfies both conditions, then |
| the algorithm stops with a warning. In this case stp only |
| satisfies the sufficient decrease condition. |
| |
| A typical invocation of dcsrch has the following outline: |
| |
| Evaluate the function at stp = 0.0d0; store in f. |
| Evaluate the gradient at stp = 0.0d0; store in g. |
| Choose a starting step stp. |
| |
| task = 'START' |
| 10 continue |
| call dcsrch(stp,f,g,ftol,gtol,xtol,task,stpmin,stpmax, |
| isave,dsave) |
| if (task .eq. 'FG') then |
| Evaluate the function and the gradient at stp |
| go to 10 |
| end if |
| |
| NOTE: The user must not alter work arrays between calls. |
| |
| The subroutine statement is |
| |
| subroutine dcsrch(f,g,stp,ftol,gtol,xtol,stpmin,stpmax, |
| task,isave,dsave) |
| where |
| |
| stp is a double precision variable. |
| On entry stp is the current estimate of a satisfactory |
| step. On initial entry, a positive initial estimate |
| must be provided. |
| On exit stp is the current estimate of a satisfactory step |
| if task = 'FG'. If task = 'CONV' then stp satisfies |
| the sufficient decrease and curvature condition. |
| |
| f is a double precision variable. |
| On initial entry f is the value of the function at 0. |
| On subsequent entries f is the value of the |
| function at stp. |
| On exit f is the value of the function at stp. |
| |
| g is a double precision variable. |
| On initial entry g is the derivative of the function at 0. |
| On subsequent entries g is the derivative of the |
| function at stp. |
| On exit g is the derivative of the function at stp. |
| |
| ftol is a double precision variable. |
| On entry ftol specifies a nonnegative tolerance for the |
| sufficient decrease condition. |
| On exit ftol is unchanged. |
| |
| gtol is a double precision variable. |
| On entry gtol specifies a nonnegative tolerance for the |
| curvature condition. |
| On exit gtol is unchanged. |
| |
| xtol is a double precision variable. |
| On entry xtol specifies a nonnegative relative tolerance |
| for an acceptable step. The subroutine exits with a |
| warning if the relative difference between sty and stx |
| is less than xtol. |
| |
| On exit xtol is unchanged. |
| |
| task is a character variable of length at least 60. |
| On initial entry task must be set to 'START'. |
| On exit task indicates the required action: |
| |
| If task(1:2) = 'FG' then evaluate the function and |
| derivative at stp and call dcsrch again. |
| |
| If task(1:4) = 'CONV' then the search is successful. |
| |
| If task(1:4) = 'WARN' then the subroutine is not able |
| to satisfy the convergence conditions. The exit value of |
| stp contains the best point found during the search. |
| |
| If task(1:5) = 'ERROR' then there is an error in the |
| input arguments. |
| |
| On exit with convergence, a warning or an error, the |
| variable task contains additional information. |
| |
| stpmin is a double precision variable. |
| On entry stpmin is a nonnegative lower bound for the step. |
| On exit stpmin is unchanged. |
| |
| stpmax is a double precision variable. |
| On entry stpmax is a nonnegative upper bound for the step. |
| On exit stpmax is unchanged. |
| |
| isave is an integer work array of dimension 2. |
| |
| dsave is a double precision work array of dimension 13. |
| |
| Subprograms called |
| |
| MINPACK-2 ... dcstep |
| MINPACK-1 Project. June 1983. |
| Argonne National Laboratory. |
| Jorge J. More' and David J. Thuente. |
| |
| MINPACK-2 Project. November 1993. |
| Argonne National Laboratory and University of Minnesota. |
| Brett M. Averick, Richard G. Carter, and Jorge J. More'. |
| """ |
|
|
| def __init__(self, phi, derphi, ftol, gtol, xtol, stpmin, stpmax): |
| self.stage = None |
| self.ginit = None |
| self.gtest = None |
| self.gx = None |
| self.gy = None |
| self.finit = None |
| self.fx = None |
| self.fy = None |
| self.stx = None |
| self.sty = None |
| self.stmin = None |
| self.stmax = None |
| self.width = None |
| self.width1 = None |
|
|
| |
| |
| self.ftol = ftol |
| self.gtol = gtol |
| self.xtol = xtol |
| self.stpmin = stpmin |
| self.stpmax = stpmax |
|
|
| self.phi = phi |
| self.derphi = derphi |
|
|
| def __call__(self, alpha1, phi0=None, derphi0=None, maxiter=100): |
| """ |
| Parameters |
| ---------- |
| alpha1 : float |
| alpha1 is the current estimate of a satisfactory |
| step. A positive initial estimate must be provided. |
| phi0 : float |
| the value of `phi` at 0 (if known). |
| derphi0 : float |
| the derivative of `derphi` at 0 (if known). |
| maxiter : int |
| |
| Returns |
| ------- |
| alpha : float |
| Step size, or None if no suitable step was found. |
| phi : float |
| Value of `phi` at the new point `alpha`. |
| phi0 : float |
| Value of `phi` at `alpha=0`. |
| task : bytes |
| On exit task indicates status information. |
| |
| If task[:4] == b'CONV' then the search is successful. |
| |
| If task[:4] == b'WARN' then the subroutine is not able |
| to satisfy the convergence conditions. The exit value of |
| stp contains the best point found during the search. |
| |
| If task[:5] == b'ERROR' then there is an error in the |
| input arguments. |
| """ |
| if phi0 is None: |
| phi0 = self.phi(0.0) |
| if derphi0 is None: |
| derphi0 = self.derphi(0.0) |
|
|
| phi1 = phi0 |
| derphi1 = derphi0 |
|
|
| task = b"START" |
| for i in range(maxiter): |
| stp, phi1, derphi1, task = self._iterate( |
| alpha1, phi1, derphi1, task |
| ) |
|
|
| if not np.isfinite(stp): |
| task = b"WARN" |
| stp = None |
| break |
|
|
| if task[:2] == b"FG": |
| alpha1 = stp |
| phi1 = self.phi(stp) |
| derphi1 = self.derphi(stp) |
| else: |
| break |
| else: |
| |
| stp = None |
| task = b"WARNING: dcsrch did not converge within max iterations" |
|
|
| if task[:5] == b"ERROR" or task[:4] == b"WARN": |
| stp = None |
|
|
| return stp, phi1, phi0, task |
|
|
| def _iterate(self, stp, f, g, task): |
| """ |
| Parameters |
| ---------- |
| stp : float |
| The current estimate of a satisfactory step. On initial entry, a |
| positive initial estimate must be provided. |
| f : float |
| On first call f is the value of the function at 0. On subsequent |
| entries f should be the value of the function at stp. |
| g : float |
| On initial entry g is the derivative of the function at 0. On |
| subsequent entries g is the derivative of the function at stp. |
| task : bytes |
| On initial entry task must be set to 'START'. |
| |
| On exit with convergence, a warning or an error, the |
| variable task contains additional information. |
| |
| |
| Returns |
| ------- |
| stp, f, g, task: tuple |
| |
| stp : float |
| the current estimate of a satisfactory step if task = 'FG'. If |
| task = 'CONV' then stp satisfies the sufficient decrease and |
| curvature condition. |
| f : float |
| the value of the function at stp. |
| g : float |
| the derivative of the function at stp. |
| task : bytes |
| On exit task indicates the required action: |
| |
| If task(1:2) == b'FG' then evaluate the function and |
| derivative at stp and call dcsrch again. |
| |
| If task(1:4) == b'CONV' then the search is successful. |
| |
| If task(1:4) == b'WARN' then the subroutine is not able |
| to satisfy the convergence conditions. The exit value of |
| stp contains the best point found during the search. |
| |
| If task(1:5) == b'ERROR' then there is an error in the |
| input arguments. |
| """ |
| p5 = 0.5 |
| p66 = 0.66 |
| xtrapl = 1.1 |
| xtrapu = 4.0 |
|
|
| if task[:5] == b"START": |
| if stp < self.stpmin: |
| task = b"ERROR: STP .LT. STPMIN" |
| if stp > self.stpmax: |
| task = b"ERROR: STP .GT. STPMAX" |
| if g >= 0: |
| task = b"ERROR: INITIAL G .GE. ZERO" |
| if self.ftol < 0: |
| task = b"ERROR: FTOL .LT. ZERO" |
| if self.gtol < 0: |
| task = b"ERROR: GTOL .LT. ZERO" |
| if self.xtol < 0: |
| task = b"ERROR: XTOL .LT. ZERO" |
| if self.stpmin < 0: |
| task = b"ERROR: STPMIN .LT. ZERO" |
| if self.stpmax < self.stpmin: |
| task = b"ERROR: STPMAX .LT. STPMIN" |
|
|
| if task[:5] == b"ERROR": |
| return stp, f, g, task |
|
|
| |
|
|
| self.brackt = False |
| self.stage = 1 |
| self.finit = f |
| self.ginit = g |
| self.gtest = self.ftol * self.ginit |
| self.width = self.stpmax - self.stpmin |
| self.width1 = self.width / p5 |
|
|
| |
| |
| |
| |
| |
| |
|
|
| self.stx = 0.0 |
| self.fx = self.finit |
| self.gx = self.ginit |
| self.sty = 0.0 |
| self.fy = self.finit |
| self.gy = self.ginit |
| self.stmin = 0 |
| self.stmax = stp + xtrapu * stp |
| task = b"FG" |
| return stp, f, g, task |
|
|
| |
| |
|
|
| |
| |
| ftest = self.finit + stp * self.gtest |
|
|
| if self.stage == 1 and f <= ftest and g >= 0: |
| self.stage = 2 |
|
|
| |
| if self.brackt and (stp <= self.stmin or stp >= self.stmax): |
| task = b"WARNING: ROUNDING ERRORS PREVENT PROGRESS" |
| if self.brackt and self.stmax - self.stmin <= self.xtol * self.stmax: |
| task = b"WARNING: XTOL TEST SATISFIED" |
| if stp == self.stpmax and f <= ftest and g <= self.gtest: |
| task = b"WARNING: STP = STPMAX" |
| if stp == self.stpmin and (f > ftest or g >= self.gtest): |
| task = b"WARNING: STP = STPMIN" |
|
|
| |
| if f <= ftest and abs(g) <= self.gtol * -self.ginit: |
| task = b"CONVERGENCE" |
|
|
| |
| if task[:4] == b"WARN" or task[:4] == b"CONV": |
| return stp, f, g, task |
|
|
| |
| |
| |
| if self.stage == 1 and f <= self.fx and f > ftest: |
| |
| fm = f - stp * self.gtest |
| fxm = self.fx - self.stx * self.gtest |
| fym = self.fy - self.sty * self.gtest |
| gm = g - self.gtest |
| gxm = self.gx - self.gtest |
| gym = self.gy - self.gtest |
|
|
| |
| |
| |
| with np.errstate(invalid="ignore", over="ignore"): |
| tup = dcstep( |
| self.stx, |
| fxm, |
| gxm, |
| self.sty, |
| fym, |
| gym, |
| stp, |
| fm, |
| gm, |
| self.brackt, |
| self.stmin, |
| self.stmax, |
| ) |
| self.stx, fxm, gxm, self.sty, fym, gym, stp, self.brackt = tup |
|
|
| |
| self.fx = fxm + self.stx * self.gtest |
| self.fy = fym + self.sty * self.gtest |
| self.gx = gxm + self.gtest |
| self.gy = gym + self.gtest |
|
|
| else: |
| |
| |
| |
|
|
| with np.errstate(invalid="ignore", over="ignore"): |
| tup = dcstep( |
| self.stx, |
| self.fx, |
| self.gx, |
| self.sty, |
| self.fy, |
| self.gy, |
| stp, |
| f, |
| g, |
| self.brackt, |
| self.stmin, |
| self.stmax, |
| ) |
| ( |
| self.stx, |
| self.fx, |
| self.gx, |
| self.sty, |
| self.fy, |
| self.gy, |
| stp, |
| self.brackt, |
| ) = tup |
|
|
| |
| if self.brackt: |
| if abs(self.sty - self.stx) >= p66 * self.width1: |
| stp = self.stx + p5 * (self.sty - self.stx) |
| self.width1 = self.width |
| self.width = abs(self.sty - self.stx) |
|
|
| |
| if self.brackt: |
| self.stmin = min(self.stx, self.sty) |
| self.stmax = max(self.stx, self.sty) |
| else: |
| self.stmin = stp + xtrapl * (stp - self.stx) |
| self.stmax = stp + xtrapu * (stp - self.stx) |
|
|
| |
| stp = np.clip(stp, self.stpmin, self.stpmax) |
|
|
| |
| |
| if ( |
| self.brackt |
| and (stp <= self.stmin or stp >= self.stmax) |
| or ( |
| self.brackt |
| and self.stmax - self.stmin <= self.xtol * self.stmax |
| ) |
| ): |
| stp = self.stx |
|
|
| |
| task = b"FG" |
| return stp, f, g, task |
|
|
|
|
| def dcstep(stx, fx, dx, sty, fy, dy, stp, fp, dp, brackt, stpmin, stpmax): |
| """ |
| Subroutine dcstep |
| |
| This subroutine computes a safeguarded step for a search |
| procedure and updates an interval that contains a step that |
| satisfies a sufficient decrease and a curvature condition. |
| |
| The parameter stx contains the step with the least function |
| value. If brackt is set to .true. then a minimizer has |
| been bracketed in an interval with endpoints stx and sty. |
| The parameter stp contains the current step. |
| The subroutine assumes that if brackt is set to .true. then |
| |
| min(stx,sty) < stp < max(stx,sty), |
| |
| and that the derivative at stx is negative in the direction |
| of the step. |
| |
| The subroutine statement is |
| |
| subroutine dcstep(stx,fx,dx,sty,fy,dy,stp,fp,dp,brackt, |
| stpmin,stpmax) |
| |
| where |
| |
| stx is a double precision variable. |
| On entry stx is the best step obtained so far and is an |
| endpoint of the interval that contains the minimizer. |
| On exit stx is the updated best step. |
| |
| fx is a double precision variable. |
| On entry fx is the function at stx. |
| On exit fx is the function at stx. |
| |
| dx is a double precision variable. |
| On entry dx is the derivative of the function at |
| stx. The derivative must be negative in the direction of |
| the step, that is, dx and stp - stx must have opposite |
| signs. |
| On exit dx is the derivative of the function at stx. |
| |
| sty is a double precision variable. |
| On entry sty is the second endpoint of the interval that |
| contains the minimizer. |
| On exit sty is the updated endpoint of the interval that |
| contains the minimizer. |
| |
| fy is a double precision variable. |
| On entry fy is the function at sty. |
| On exit fy is the function at sty. |
| |
| dy is a double precision variable. |
| On entry dy is the derivative of the function at sty. |
| On exit dy is the derivative of the function at the exit sty. |
| |
| stp is a double precision variable. |
| On entry stp is the current step. If brackt is set to .true. |
| then on input stp must be between stx and sty. |
| On exit stp is a new trial step. |
| |
| fp is a double precision variable. |
| On entry fp is the function at stp |
| On exit fp is unchanged. |
| |
| dp is a double precision variable. |
| On entry dp is the derivative of the function at stp. |
| On exit dp is unchanged. |
| |
| brackt is an logical variable. |
| On entry brackt specifies if a minimizer has been bracketed. |
| Initially brackt must be set to .false. |
| On exit brackt specifies if a minimizer has been bracketed. |
| When a minimizer is bracketed brackt is set to .true. |
| |
| stpmin is a double precision variable. |
| On entry stpmin is a lower bound for the step. |
| On exit stpmin is unchanged. |
| |
| stpmax is a double precision variable. |
| On entry stpmax is an upper bound for the step. |
| On exit stpmax is unchanged. |
| |
| MINPACK-1 Project. June 1983 |
| Argonne National Laboratory. |
| Jorge J. More' and David J. Thuente. |
| |
| MINPACK-2 Project. November 1993. |
| Argonne National Laboratory and University of Minnesota. |
| Brett M. Averick and Jorge J. More'. |
| |
| """ |
| sgn_dp = np.sign(dp) |
| sgn_dx = np.sign(dx) |
|
|
| |
| sgnd = sgn_dp * sgn_dx |
|
|
| |
| |
| |
| |
| if fp > fx: |
| theta = 3.0 * (fx - fp) / (stp - stx) + dx + dp |
| s = max(abs(theta), abs(dx), abs(dp)) |
| gamma = s * np.sqrt((theta / s) ** 2 - (dx / s) * (dp / s)) |
| if stp < stx: |
| gamma *= -1 |
| p = (gamma - dx) + theta |
| q = ((gamma - dx) + gamma) + dp |
| r = p / q |
| stpc = stx + r * (stp - stx) |
| stpq = stx + ((dx / ((fx - fp) / (stp - stx) + dx)) / 2.0) * (stp - stx) |
| if abs(stpc - stx) <= abs(stpq - stx): |
| stpf = stpc |
| else: |
| stpf = stpc + (stpq - stpc) / 2.0 |
| brackt = True |
| elif sgnd < 0.0: |
| |
| |
| |
| |
| theta = 3 * (fx - fp) / (stp - stx) + dx + dp |
| s = max(abs(theta), abs(dx), abs(dp)) |
| gamma = s * np.sqrt((theta / s) ** 2 - (dx / s) * (dp / s)) |
| if stp > stx: |
| gamma *= -1 |
| p = (gamma - dp) + theta |
| q = ((gamma - dp) + gamma) + dx |
| r = p / q |
| stpc = stp + r * (stx - stp) |
| stpq = stp + (dp / (dp - dx)) * (stx - stp) |
| if abs(stpc - stp) > abs(stpq - stp): |
| stpf = stpc |
| else: |
| stpf = stpq |
| brackt = True |
| elif abs(dp) < abs(dx): |
| |
| |
|
|
| |
| |
| |
| |
| theta = 3 * (fx - fp) / (stp - stx) + dx + dp |
| s = max(abs(theta), abs(dx), abs(dp)) |
|
|
| |
| |
| gamma = s * np.sqrt(max(0, (theta / s) ** 2 - (dx / s) * (dp / s))) |
| if stp > stx: |
| gamma = -gamma |
| p = (gamma - dp) + theta |
| q = (gamma + (dx - dp)) + gamma |
| r = p / q |
| if r < 0 and gamma != 0: |
| stpc = stp + r * (stx - stp) |
| elif stp > stx: |
| stpc = stpmax |
| else: |
| stpc = stpmin |
| stpq = stp + (dp / (dp - dx)) * (stx - stp) |
|
|
| if brackt: |
| |
| |
| |
| if abs(stpc - stp) < abs(stpq - stp): |
| stpf = stpc |
| else: |
| stpf = stpq |
|
|
| if stp > stx: |
| stpf = min(stp + 0.66 * (sty - stp), stpf) |
| else: |
| stpf = max(stp + 0.66 * (sty - stp), stpf) |
| else: |
| |
| |
| |
| if abs(stpc - stp) > abs(stpq - stp): |
| stpf = stpc |
| else: |
| stpf = stpq |
| stpf = np.clip(stpf, stpmin, stpmax) |
|
|
| else: |
| |
| |
| |
| |
| if brackt: |
| theta = 3.0 * (fp - fy) / (sty - stp) + dy + dp |
| s = max(abs(theta), abs(dy), abs(dp)) |
| gamma = s * np.sqrt((theta / s) ** 2 - (dy / s) * (dp / s)) |
| if stp > sty: |
| gamma = -gamma |
| p = (gamma - dp) + theta |
| q = ((gamma - dp) + gamma) + dy |
| r = p / q |
| stpc = stp + r * (sty - stp) |
| stpf = stpc |
| elif stp > stx: |
| stpf = stpmax |
| else: |
| stpf = stpmin |
|
|
| |
| if fp > fx: |
| sty = stp |
| fy = fp |
| dy = dp |
| else: |
| if sgnd < 0: |
| sty = stx |
| fy = fx |
| dy = dx |
| stx = stp |
| fx = fp |
| dx = dp |
|
|
| |
| stp = stpf |
|
|
| return stx, fx, dx, sty, fy, dy, stp, brackt |
|
|