Date post: | 16-Dec-2015 |
Category: |
Documents |
Upload: | joy-potter |
View: | 218 times |
Download: | 1 times |
Production SystemsProductions systems are rule based forward chaining systems.
They are based on forward chained reasoning, but are extended to be a kind of programming language systems.
Systems exist that can handle several thousand rules efficiently.
What is Production SystemsAlgorithmic ,procedural (C,FORTRAN)
Applicative,functional (LISP)
Logic programming (PROLOG)
Object oriented (Smalltalk,Java,Simula)
Hybrid systems (KEE,NEXPERT,ART)
Forward chained
Rule based
Symbolic
Rules comunicate only through Working Memory
When is Production Systems used
•When the knowledge is present on the form
situation-action
•When the program control is very complex, i.e. no algorithm
•When the program is expected to be heavily extended and modified over a long period
Good applications for FC
Good applications for BC
Conclusions
Hypothesis
Evidence
Facts
Forward and Backward chaining
Narrow and deep
Broad and shallow
Incremental forward chaining%% rule '9.3'american(X) and weapon(Y) and sells(X,Y,Z) and hostile(Z) => criminal(X).
%% rule '9.6'missile(X) and owns(nono,X) => sells(west,X,nono).
%% rule '9.7'missile(X) => weapon(X).%% rule '9.8'
enemy(X,america) => hostile(X).
%% factst=> owns(nono,m1). % 9.4t=> missile(m1). % 9.5t=> american(west). % 9.9t=> enemy(nono,america). % 9.10
Derivations:
+ owns(nono,m1)
+ missile(m1)
+ sells(west,m1,nono)
+ weapon(m1)
+ american(west)
+ enemy(nono,america)
+ hostile(nono)
+ criminal(west)
Forward chaining Proxy format
rule '9.3'if american(X) and weapon(Y) and sells(X,Y,Z) and hostile(Z)then criminal(X).
rule '9.6'if missile(X) and owns(nono,X) then sells(west,X,nono).
rule '9.7'if missile(X) then weapon(X).
rule '9.8' if enemy(X,america)
then hostile(X)
facts owns(nono,m1) and % 9.4 missile(m1) and % 9.5 american(west) and % 9.9 enemy(nono,america). % 9.10
Derivations
*** 9.6 ==> sells(west,m1,nono) ***
*** 9.7 ==> weapon(m1) ***
*** 9.8 ==> hostile(nono) ***
*** 9.3 ==> criminal(west) ***
*** Time 0 ms
Production Systems Forward Chained
All communictations via Working Memory (WM).
1. [Matching] Find all the rules whose premise are satisfied
2. [Conflict Resolution] If more than one rule apply, select the one with the highest priority
3. [Execution] Execute(fire) the rule selected. The execution will change the WM.
4. Then start again from top.
Efficiency considerations 1Forward reasoning can be done in levels.
Every new fact must be derived from at least 1 fact in the previous level.
This is true because inference mechanism that does not require a new fact from level t-1 could have been done at in level t-1 already.
Efficiency considerations 2
With suitable indexing, it is easy to identify all therules that can be triggered by a new fact.Typically, there are many more rules than facts in a production system rule base.
Rules
Facts
Efficiency considerations 3
Forward chaining gives a lot of irrelevant facts. Oneway to avoid this is to simulate backward chaining.This means that goals and subgoals are explicitly representedand used to control the reasoning.
Another way is to restrict forward chaining to a subset of rules.
Efficiency considerations 4
(according to AIMA)
A method is to rewrite the rule set using information about
the goal so that only relevant variable bindings –
those belonging to a magic set – are considered during forward inference. For instance, if the goal is criminal(west), the rule that concludes criminal(X) is prefixed with an extra conjunct
magic(X) and american(X) and weapon(X) and
sells(X,Y,Z) and hostile(Z) => criminal(X)
which avoids redundant inferences if west is in the magic set.
Efficiency considerations 5
There may be 300 mill americans but only 5(?) hostile nations.
It may be smart to reorder the condition sequence of the rules in increasing ”plurality” .
not
american(X) and weapon(X) and
sells(X,Y,Z) and hostile(Z) => criminal(X)
but
hostile(Z) and sells(X,Y,Z) and weapon(X) and american(X) => criminal(X)
Facts searching for rules
FACTS RULES
RULESFACTS
Facts searching for rules
Rules searching for facts
The Rete(*) algorithm
This algortithm preprocesses the set of rules
in the knowledge base to construct a set of dataflow
network in which each rule is a literal from the rule premise.
Variable bindings flow through the network and are filtered
out when they fail to match a literal. …
At any given point, the state of a rete network captures all the partial matches of the rules, avoiding a great deal of recomputation.
Efficient algorithm to match facts against (patterns) of rules to determine which rules have all its conditions fullfilled
(*) pronounced as ”treaty”. Means ”net” in Latin
Production systems and applications
System Application
R1 XCON (configuration of VAX computers)
OPS-5 Several applicatons
CLIPS Severl applications, used by NASA
ACT Cognitive architecture
SOAR Cognitive architecture with learning
PRAGMA BusTUC ( natural language interpretation)
PROXY Education
Production system PROXY
PROlog implementationof produXion sYstem
All communictations via Working Memory (WM).
1. [Matching] Find the first rule whose premise are satisfied
2. [Conflict Resolution] The first has highest priority
3. [Execution] Execute(fire) the rule selected. The execution will
change the WM. Then start from top.
Conflict Resolution Strategies
•First found
•Least recently used
•Most recently used
•Antecedent ordered
•Consequent ordered
•Most complex first
•Simplest first
•Rule priority
•User defined
Refraction(don’t fire twice in sequence)
Recency(the newest fact has priority)
Specificity(the rule that matches most facts)
Arbitrary choice
Menu ”LEX” strategy
The logic of Proxy”Imperative logic”
Indicative Logic
If Conditions then Conclusions
Productions
If Conditions then Actions
Imperative Logic
If Conditions then cause Conclusions
PROXY implementation outline
proxy:-
repeat,
not epoch.
epoch :-
( if P then Q ),
P,
not Q,
assert Q.
% repeat until
% epoch fails
% find a rule
% check that P is true
% and not Q is true
% put Q into KB
Alternative for
negative conclusions
epoch :-
( if P then not Q ),
P,
Q,
retract Q.
Proxy’s Refraction Rule
Proxy requires that all the conditions and not all the conclusions are true when a rule fires. Then all the conclusions will be made true by the imperative logic, so the same rule will not fire the next time.
The method is not particularly efficient, but suffices for small to medium rule bases (< 1000 rules).
Refraction (from refrain)
CLIPSC Language Implementation of production Systems
Example of rule format
(defrule become-adult
(child harry)
(birthday harry August-15)
(age harry 17)
(date today August-15)
=>
(assert (adult harry))
(retract (child harry))
(retract (age harry 17))
(assert (age harry 18))
(print t “harry is now an adult”))
OPS-5with example of rules for goal based reasoning
English version
IF there is a goal for monkey to be on some physical object
and the object is at a particular location
and the monkey is at some location holding something
THEN establish a goal for the monkey to hold nothing.
(p On::Phys-Object:Holds
(goal ^status active ^type on ôbject-name <o1>)
(phys-object ^name <o1> ^at <p>)
(monkey ^at <p> ^holds <> nil)
-->
(make goal ^status active ^type on ^object-name nil))
Pragma
Example of Pragma rule (to be shown),
Purpose:
If time requested is before 430 (today) (" half past four" ) andtime now is after requested time + 1200 then change time requested to 1200 + time requested andchange day to tomorrow.
Pragma is a production system for translating the natural language queries (in the form of an intermediate meaning representation language TQL) to a database query.
At present, there are 1329 rules. In average, 10 rules are fired.
The time used is negligable.
Pragma rule example
then Sixteen isa clock, not Four isa clock, srel/Prep/time/Sixteen/D, not srel/Prep/time/Four/D,
queryitem(atday(TOMORROW)), queryitem(atdate(TODATE1)),
message( ‘I assume you mean routes for tomorrow').
rule defaulttomorrowafternoon
if srel/Rel/time/Four/_,
not _ isa midnight, not _ isa morning, not _ isa prenoon, not _ isa afternoon, not _ isa evening, not _ isa night, not _ isa date, not _ isa weekday,
{Four < 0430, Sixteen is Four + 1200)}, queryitem(timenow(NOW)), {NOW > Sixteen} queryitem(today(TODAY)), queryitem(todaysdate(TODATE)), { daysucc(TODAY,TOMORROW)}, { add_days(TODATE,1,TODATE1)},