I'm trying to prove the statement ~(a>~b) => a in a Hilbert style system. Unfortunately it seems like it is impossible to come up with a general algorithm to find a proof, but I'm looking for a brute force type strategy. Any ideas on how to attack this are welcome.

If You like "programming" in combinatory logic, then
The possibility of this translation in ensured by CurryHoward correspondence. Unfortunately, the situation is so simple only for a subset of (propositional) logic: restricted using conditionals. Negation is a complication, I know nothing about that. Thus I cannot answer this concrete question: ¬ (α ⊃ ¬β) ⊢ α But in cases where negation is not part of the question, the mentioned automatic translation (and backtranslation) can be a help, provided that You have already practice in functional programming or combinatory logic. Of course, there are other helps, too, where we can remain inside the realm of logic:
As for theorem provers, as far as I know, the capabilities of some of them are extended so that they can harness interactive human assistance. E.g. Coq is such. AppendixLet us see an example. How to prove α ⊃ α? Hilbert system
Let us prove theorem: α ⊃ α is deducible for any α proposition. Let us introduce the following notations and abbreviations, developing a "proof calculus": Proof calculus
A tree diagram notation: Axiom scheme — Verum ex quolibet:
Axiom scheme — chain rule:
Rule of inference — modus ponens:
Proof treeLet us see a tree diagram representation of the proof: ━━━━━━━━━━━━━━━━━━━━━━━━━━━━ [CR_{α, α⊃α, α}]
━━━━━━━━━━━━━━━ [VEQ_{α, α⊃α}]
Proof formulaeLet us see an even conciser (algebraic? calculus?) representation of the proof: (CR_{α,α⊃α,α} VEQ_{α,α ⊃ α}) VEQ_{α,α}: ⊢ α⊃ α so, we can represent the proof tree by a single formula:
It is worth of keep record about the concrete instantiation, that' is typeset here with subindexical parameters. As it will be seen from the series of examples below, we can develop a proof calculus, where axioms are notated as sort of base combinators, and modus ponens is notated as a mere application of its "premise" subproofs: Example 1VEQ_{α,β}: ⊢ α ⊃ β ⊃ α meant as Verum ex quolibet axiom scheme instantiated with α,β provides a proof for the statement, that α ⊃ β ⊃ α is deducible. Example 2VEQ_{α,α}: ⊢ α ⊃ α ⊃ α Verum ex quolibet axiom scheme instantiated with α,α provides a proof for the statement, that α ⊃ α ⊃ α is deducible. Example 3VEQ_{α, α⊃α}: ⊢ α ⊃ (α ⊃ α) ⊃ α meant as Verum ex quolibet axiom scheme instantiated with α, α⊃α provides a proof for the statement, that α ⊃ (α ⊃ α) ⊃ α is deducible. Example 4CR_{α,β,γ}: ⊢ (α ⊃ β ⊃ γ) ⊃ (α ⊃ β) ⊃ α⊃ γ meant as Chain rule axiom scheme instantiated with α,β,γ provides a proof for the statement, that (α ⊃ β ⊃ γ) ⊃ (α ⊃ β) ⊃ α⊃ γ is deducible. Example 5CR_{α,α⊃α,α}: ⊢ [α ⊃ (α⊃α) ⊃ α] ⊃ (α ⊃ α⊃α) ⊃ α⊃ α meant as Chain rule axiom scheme instantiated with α,α⊃α,α provides a proof for the statement, that [α ⊃ (α⊃α) ⊃ α] ⊃ (α ⊃ α⊃α) ⊃ α⊃ α is deducible. Example 6CR_{α,α⊃α,α} VEQ_{α,α ⊃ α}: ⊢ (α ⊃ α⊃α) ⊃ α⊃ α meant as If we combine CR_{α,α⊃α,α} and VEQ_{α,α ⊃ α} together via modus ponens, then we get a proof that proves the following statement: (α ⊃ α⊃α) ⊃ α⊃ α is deducible. Example 7(CR_{α,α⊃α,α} VEQ_{α,α ⊃ α}) VEQ_{α,α}: ⊢ α⊃ α If we combine the compund proof (CR_{α,α⊃α,α}) together with VEQ_{α,α ⊃ α} (via modus ponens), then we get an even more compund proof. This proves the following statement: α⊃ α is deducible. Combinatory logicAlthough all this above has indeed provided a proof for the expected theorem, but it seems very unintuitive. It cannot be seen how people can "find out" the proof. Let us see another field, where similar problems are investigated. Untyped combinatory logicCombinatory logic can be regarded also as an extremely minimalistic functional programming language. Despite of its minimalism, it entirely Turing complete, but evenmore, one can write quite intuitive and complex programs even in this seemingly obfuscated language, in a modular and reusable way, with some practice gained from "normal" functional programming and some algebraic insights, . Adding typing rulesCombinatory logic also has typed variants. Syntax is augmented with types, and evenmore, in addition to reduction rules, also typing rules are added. For base combinators:
Typing rule of application:
Notations and abbreviations
CurryHoward correspondenceIt can be seen that the "patterns" are isomorphic in the proof calculus and in this typed combinatory logic.
Functional programmingBut what is the gain? Why should we translate problems to combinatory logic? I, personally, find it sometimes useful, because functional programming is a thing which has a large literature and is applied in practical problems. People can get used to it, when forced to use it in erveryday programming tasks ans pracice. And some tricks and hints of functional programming practice can be exploited very well in combinatory logic reductions. And if a "transferred" practice develops in combinatory logic, then it can be harnessed also in finding proofs in Hilbert system. External linksLinks how types in functional programming (lambda calculus, combinatory logic) can be translated into logical proofs and theorems:
Links (or books) how to learn methods and practice to program directly in combinatory logic:



The Hilbert system is not normally used in automated theorem proving. It is much easier to write a computer program to do proofs using natural deduction. From the material of a CS course:



Finding proofs in Hilbert calculus is very hard. You could try to translate proofs in sequent calculus or natural deduction to Hilbert calculus. 


You can approach the problem also by setting ¬ α = α → ⊥. We can then adopt the Hilbert style system as shown in the appendix of one of the answers, and make it classical by adding the following two axioms respectively constants: Ex Falso Quodlibet: E_{α} : ⊥ → α A sequent proof of ¬ (α → ¬ β) → α then reads as follows:
From this sequent proof, one can extract a lambda expression. A possible lambda expressions for the above sequent proof reads as follows: λy.(M λz.(E (y λx.(E (z x))))) This lambda expression can be converted into a SKI term. A possible SKI term for the above lambda expression reads as follows: S (K M)) (L2 (L1 (K (L2 (L1 (K I)))))) This gives the following Hilbert style proofs: Lemma 1: A weakened form of the chain rule: Lemma 2: A weakened form of Ex Falso: Final Proof: Quite a long proof! Bye 





I use Polish notation. Since you referenced the Wikipedia, we'll suppose our basis is 1 CpCqp. 2 CCpCqrCCpqCpr. 3 CCNpNqCqp. We want to prove NCaNb  a. I use the theorem prover Prover9. So, we'll need to parenthesize everything. Also, the variables of Prover9 go (x, y, z, u, w, v5, v6, ..., vn). All other symbols get interpreted as functions or relations or predicates. All axioms need a predicate symbol "P" before them also, which we can think of as meaning "it is provable that..." or more simply "provable". And all sentences in Prover9 need to get ended by a period. Thus, axioms 1, 2, and 3 become respectively: 1 P(C(x,C(y,x))). 2 P(C(C(x,C(y,z)),C(C(x,y),C(x,z)))). 3 P(C(C(N(x),N(y)),C(y,x))). We can combine the rules of uniform substitution and detachment into the rule of condensed detachment. In Prover9 we can represent this as: P(C(x,y))  P(x)  P(y). The "" indicates logical disjunction, and "" indicates negation. Prover9 proves by contradiction. The rule says in words can get interpreted as saying "either it is not the case that if x, then y is provable, or it is not the case that x is provable, or y is provable." Thus, if it does hold that if x, then y is provable, the first disjunct fails. If it does hold that x is provable, then the second disjunct fails. So, if, if x, then y is provable, if x is provable, then the third disjunct, that y is provable follows by the rule. Now we can't make substitutions in NCaNb, since it's not a tautology. Nor is "a". Thus, if we put P(N(C(a,N(b)))). as an assumption, Prover9 will interpret "a" and "b" as nullary functions, which effectively turns them into constants. We also want to make P(a) as our goal. Now we can also "tune" Prover9 using various theoremproving strategies such as weighting, resonance, subformula, pickgiven ratio, level saturation (or even invent our own). I'll use the hints strategy a little bit, by making all of the assumptions (including the rule of inference), and the goal into hints. I'll also turn the max weight down to 40, and make 5 the number of maximum variables. I use the version with the graphical interface, but here's the entire input:
Here's the proof it gave me:


