# Chaitin's construction

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Writing a program in Haskell -- or in [[combinatory logic]]:-) -- which could help in making conjectures on [[combinatory logic]]-based Chaitin's constructions. It would make only approximations, in a similar way that most Mandelbrot plotting softwares work: it would ask for a maximum limit of iterations. |
Writing a program in Haskell -- or in [[combinatory logic]]:-) -- which could help in making conjectures on [[combinatory logic]]-based Chaitin's constructions. It would make only approximations, in a similar way that most Mandelbrot plotting softwares work: it would ask for a maximum limit of iterations. |
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− | chaitin --computation=cl --coding=tromp --limit-of-iterations=5000 --digits=10 --decimal |
+ | chaitin --model-of-computation=cl --encoding=tromp --limit-of-iterations=5000 --digits=10 --decimal |

+ | chaitin --model-of-computation=cl --encoding=direct --limit-of-iterations=5000 --digits=10 --decimal |

## Revision as of 13:39, 5 August 2006

## Contents |

## 1 Introduction

Are there any real numbers which are defined exactly, but cannot be computed? This question leads us to exact real arithmetic, foundations of mathematics and computer science.

See Wikipedia article on Chaitin's construction, referring to e.g.

- Computing a Glimpse of Randomness (written by Cristian S. Calude, Michael J. Dinneen, and Chi-Kou Shu)
- Omega and why math has no TOEs (Gregory Chaitin).

## 2 Basing it on combinatory logic

Some more direct relatedness to functional programming: we can base Ω on combinatory logic (instead of a Turing machine).

### 2.1 Coding

See the prefix coding system described in Binary Lambda Calculus and Combinatory Logic (page 20) written by John Tromp:

of course, *c*, *d* are meta-variables, and also some other notations are changed slightly.

### 2.2 Decoding

Having seen this, decoding is rather straightforward. Here is a parser for illustration, but it serves only didactical purposes: it will not be used in the final implementation, because a good term generator makes parsing superfluous at this task.

### 2.3 Chaitin's construction

Now, Chaitin's construction will be here

where

- hnf
- should denote an unary predicate “has normal form” (“terminates”)
- dc
- should mean an operator “decode” (a function from finite bit sequences to combinatory logic terms)
- should denote the set of all finite bit sequences
- Dom
_{dc} - should denote the set of syntactically correct bit sequences (semantically, they may either terminate or diverge), i.e. the domain of the decoding function, i.e. the range of the coding function. Thus,
- “Absolute value”
- should mean the length of a bit sequence (not combinatory logic term evaluation!)

## 3 Eliminating any concept of code by handling combinatory logic terms directly

We can avoid referring to any code notion, if we transfer (lift) the notion of “length” from bit sequences to combinatory logic terms in an appropriate way. Let us call it the “norm” of the term:

where

Thus, we have no notions of “bit sequence”,“code”, “coding”, “decoding” at all. But their ghosts still haunt us: the definition of norm function looks rather strange without thinking on the fact that is was transferred from a concept of coding.

Question: If we already move away from the approaches referring to any code concept, then could we define norm in other ways? E.g.

And is it worth doing it at all? The former one, at leat, had a good theoretical foundation (based on analysis, arithmetic and probability theory). This latter one is not so cleaner, that we should prefer it, so, lacking theoretical grounds.

What I really want is to exclude the (IMHO) underestimation of this “probability of termination” number -- an underestimation coming from taking into account the syntactically non-correct codes (IMHO). Thus taking only termination vs nontermination into account, when calculating this number (which can be interpreted as a probability).

## 4 Implementation

In Haskell.

### 4.1 Term generator

module CLGen where import Generator (gen0) import CL (k, s, apply) direct :: [CL] direct = gen0 apply [s, k]

See combinatory logic term modules here.

module Generator (gen0) where import PreludeExt (cross) gen0 :: (a -> a -> a) -> [a] -> [a] gen0 f c = gen f c 0 gen :: (a -> a -> a) -> [a] -> Integer -> [a] gen f c n = sizedGen f c n ++ gen f c (succ n) sizedGen :: (a -> a -> a) -> [a] -> Integer -> [a] sizedGen f c 0 = c sizedGen f c (n + 1) = map (uncurry f) $ concat [sizedGen f c i `cross` sizedGen f c (n - i) | i <- [0..n]]

module PreludeExt (cross) where cross :: [a] -> [a] -> [(a, a)] cross xs ys = [(x, y) | x <- xs, y <- ys]

## 5 Related concepts

## 6 To do

Writing a program in Haskell -- or in combinatory logic:-) -- which could help in making conjectures on combinatory logic-based Chaitin's constructions. It would make only approximations, in a similar way that most Mandelbrot plotting softwares work: it would ask for a maximum limit of iterations.

chaitin --model-of-computation=cl --encoding=tromp --limit-of-iterations=5000 --digits=10 --decimal chaitin --model-of-computation=cl --encoding=direct --limit-of-iterations=5000 --digits=10 --decimal