This might be similar to user635541's answer. I don't fully understand his approach.

Using the matrix representation for Fibonacci numbers, discussed in other answers, we get a way to go from `F_n`

and `F_m`

to `F_{n+m}`

and `F_{n-m}`

in constant time, using only plus, multiplication, minus and division (*actually not! see the update*). We also have a zero (the identity matrix), so **it is a mathematical group!**

Normally when doing binary search we also want a division operator for taking averages. Or at least division by 2. However if we want to go from `F_{2n}`

to `F_n`

it requires a square root. Luckily it turns out that plus and minus are all we need for a logarithmic time 'nearly' binary search!

Wikipedia writes about the approach, ironically called Fibonacci_search, but the article is not very clearly written, so I don't know if it is exactly the same approach as mine. It is very important to understand that the Fibonacci numbers used for the Fibonacci search have nothing to do with the numbers we are looking for. It's a bit confusing. To demonstrate the approach, here is first an implementation of standard 'binary search' only using plus and minus:

```
def search0(test):
# Standard binary search invariants:
# i <= lo then test(i)
# i >= hi then not test(i)
# Extra invariants:
# hi - lo = b
# a, b = F_{k-1}, F_k
a, b = 0, 1
lo, hi = 0, 1
while test(hi):
a, b = b, a + b
hi = b
while b != 1:
mi = lo + a
if test(mi):
lo = mi
a, b = 2*a - b, b - a
else:
hi = mi
a, b = b - a, a
return lo
>>> search0(lambda n: n**2 <= 25)
5
>>> search0(lambda n: 2**n <= 256)
8
```

Here `test`

is some boolean function; `a`

and `b`

are consecutive fibonacci numbers `f_k`

and `f_{k-1}`

such that the difference between out upper bound `hi`

and lower bound `lo`

is always `f_k`

. We need both `a`

and `b`

so we can increase and decrease the implicit variable `k`

efficiently.

Alright, so how do we use this to solve the problem? I found it useful to create a wrapper around our Fibonacci representation, that hides the matrix details. In practice (is there such a thing for a Fibonacci searcher?) **you would want to inline everything manually**. That would spare you the redundancy in the matrices and make some optimization around the matrix inversion.

```
import numpy as np
class Fib:
def __init__(self, k, M):
""" `k` is the 'name' of the fib, e.g. k=6 for F_6=8.
We need this to report our result in the very end.
`M` is the matrix representation, that is
[[F_{k+1}, F_k], [F_k, F_{k-1}]] """
self.k = k
self.M = M
def __add__(self, other):
return Fib(self.k + other.k, self.M.dot(other.M))
def __sub__(self, other):
return self + (-other)
def __neg__(self):
return Fib(-self.k, np.round(np.linalg.inv(self.M)).astype(int))
def __eq__(self, other):
return self.k == other.k
def value(self):
return self.M[0,1]
```

However the code does work, so we can test it as follows. Notice how little different the search function is from when our objects were integers and not Fibonaccis.

```
def search(test):
Z = Fib(0, np.array([[1,0],[0,1]])) # Our 0 element
A = Fib(1, np.array([[1,1],[1,0]])) # Our 1 element
a, b = Z, A
lo, hi = Z, A
while test(hi.value()):
a, b = b, a + b
hi = b
while b != A:
mi = lo + a
if test(mi.value()):
lo = mi
a, b = a+a-b, b-a
else:
hi = mi
a, b = b-a, a
return lo.k
>>> search(lambda n: n <= 144)
12
>>> search(lambda n: n <= 0)
0
```

The **remaining open question** is whether there is an efficient search algorithm for monoids. That is one that doesn't need a minus / additive inverse. My guess is no: that without minus you need the extra memory of Nikita Rybak.

## Update

I just realized that we don't need division at all. The determinant of the `F_n`

matrix is just `(-1)^n`

, so we can actually do everything without division. In the below I removed all the matrix code, but I kept the `Fib`

class, just because everything got so extremely messy otherwise.

```
class Fib2:
def __init__(self, k, fp, f):
""" `fp` and `f` are F_{k-1} and F_{k} """
self.k, self.fp, self.f = k, fp, f
def __add__(self, other):
fnp, fn, fmp, fm = self.fp, self.f, other.fp, other.f
return Fib2(self.k + other.k, fn*fm+fnp*fmp, (fn+fnp)*fm+fn*fmp)
def __sub__(self, other):
return self + (-other)
def __neg__(self):
fp, f = self.f + self.fp, -self.f
return Fib2(-self.k, (-1)**self.k*fp, (-1)**self.k*f)
def __eq__(self, other):
return self.k == other.k
def value(self):
return self.f
def search2(test):
Z = Fib2(0, 1, 0)
A = Fib2(1, 0, 1)
...
>>> search2(lambda n: n <= 280571172992510140037611932413038677189525)
200
>>> search2(lambda n: n <= 4224696333392304878706725602341482782579852840250681098010280137314308584370130707224123599639141511088446087538909603607640194711643596029271983312598737326253555802606991585915229492453904998722256795316982874482472992263901833716778060607011615497886719879858311468870876264597369086722884023654422295243347964480139515349562972087652656069529806499841977448720155612802665404554171717881930324025204312082516817125)
2000
>>> search2(lambda n: n <= 2531162323732361242240155003520607291766356485802485278951929841991312781760541315230153423463758831637443488219211037689033673531462742885329724071555187618026931630449193158922771331642302030331971098689235780843478258502779200293635651897483309686042860996364443514558772156043691404155819572984971754278513112487985892718229593329483578531419148805380281624260900362993556916638613939977074685016188258584312329139526393558096840812970422952418558991855772306882442574855589237165219912238201311184749075137322987656049866305366913734924425822681338966507463855180236283582409861199212323835947891143765414913345008456022009455704210891637791911265475167769704477334859109822590053774932978465651023851447920601310106288957894301592502061560528131203072778677491443420921822590709910448617329156135355464620891788459566081572824889514296350670950824208245170667601726417091127999999941149913010424532046881958285409468463211897582215075436515584016297874572183907949257286261608612401379639484713101138120404671732190451327881433201025184027541696124114463488665359385870910331476156665889459832092710304159637019707297988417848767011085425271875588008671422491434005115288334343837778792282383576736341414410248994081564830202363820504190074504566612515965134665683289356188727549463732830075811851574961558669278847363279870595320099844676879457196432535973357128305390290471349480258751812890314779723508104229525161740643984423978659638233074463100366500571977234508464710078102581304823235436518145074482824812996511614161933313389889630935320139507075992100561077534028207257574257706278201308302642634678112591091843082665721697117838726431766741158743554298864560993255547608496686850185804659790217122426535133253371422250684486113457341827911625517128815447325958547912113242367201990672230681308819195941016156001961954700241576553750737681552256845421159386858399433450045903975167084252876848848085910156941603293424067793097271128806817514906531652407763118308162377033463203514657531210413149191213595455280387631030665594589183601575340027172997222489081631144728873621805528648768511368948639522975539046995395707688938978847084621586473529546678958226255042389998718141303055036060772003887773038422366913820397748550793178167220193346017430024134496141145991896227741842515718997898627269918236920453493946658273870473264523119133765447653295022886429174942653014656521909469613184983671431465934965489425515981067546087342348350724207583544436107294087637975025147846254526938442435644928231027868701394819091132912397475713787593612758364812687556725146456646878912169274219209708166678668152184941578590201953144030519381922273252666652671717526318606676754556170379350956342095455612780202199922615392785572481747913435560866995432578680971243966868110016581395696310922519803685837460795358384618017215468122880442252343684547233668502313239328352671318130604247460452134121833305284398726438573787798499612760939462427922917659263046333084007208056631996856315539698234022953452211505675629153637867252695056925345220084020071611220575700841268302638995272842160994219632684575364180160991884885091858259996299627148614456696661412745040519981575543804847463997422326563897043803732970397488471644906183310144691243649149542394691524972023935190633672827306116525712882959108434211652465621144702015336657459532134026915214509960877430595844287585350290234547564574848753110281101545931547225811763441710217452979668178025286460158324658852904105792472468108996135476637212057508192176910900422826969523438985332067597093454021924077101784215936539638808624420121459718286059401823614213214326004270471752802725625810953787713898846144256909835116371235019527013180204030167601567064268573820697948868982630904164685161783088076506964317303709708574052747204405282785965604677674192569851918643651835755242670293612851920696732320545562286110332140065912751551110134916256237884844001366366654055079721985816714803952429301558096968202261698837096090377863017797020488044826628817462866854321356787305635653577619877987998113667928954840972022833505708587561902023411398915823487627297968947621416912816367516125096563705174220460639857683971213093125)
20000
```

This all works like a charm. My only worry is that the bit complexity such dominates the calculation, that we might as well have just done a sequential search. Or actually, just looking at the number of digits could probably tell you pretty much which you were looking at. That's not as fun though.