matmod/model.py

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"""
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Matrix model semantics and satisfiability of
a given logic.
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"""
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from common import set_to_str
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from logic import (
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get_propostional_variables, Logic,
Operation, PropositionalVariable, Term
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)
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from collections import defaultdict
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from functools import lru_cache
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from itertools import combinations_with_replacement, permutations, product
from typing import Dict, List, Set, Tuple
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__all__ = ['ModelValue', 'ModelFunction', 'Model']
class ModelValue:
def __init__(self, name):
self.name = name
self.hashed_value = hash(self.name)
def immutable(self, name, value):
raise Exception("Model values are immutable")
self.__setattr__ = immutable
def __str__(self):
return self.name
def __hash__(self):
return self.hashed_value
def __eq__(self, other):
return isinstance(other, ModelValue) and self.name == other.name
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def __deepcopy__(self, _):
return ModelValue(self.name)
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class ModelFunction:
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def __init__(self, arity: int, mapping, operation_name = ""):
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self.operation_name = operation_name
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self.arity = arity
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# Transform the mapping such that the
# key is always a tuple of model values
corrected_mapping: Dict[Tuple[ModelValue], ModelValue] = {}
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for k, v in mapping.items():
if isinstance(k, tuple):
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assert len(k) == arity
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corrected_mapping[k] = v
elif isinstance(k, list):
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assert len(k) == arity
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corrected_mapping[tuple(k)] = v
else: # Assume it's atomic
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assert arity == 1
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corrected_mapping[(k,)] = v
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self.mapping = corrected_mapping
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def __str__(self):
str_dict = dict()
for k, v in self.mapping.items():
inputstr = "(" + ", ".join(str(ki) for ki in k) + ")"
str_dict[inputstr] = str(v)
return self.operation_name + " " + str(str_dict)
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def __call__(self, *args):
return self.mapping[args]
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class Model:
def __init__(
self,
carrier_set: Set[ModelValue],
logical_operations: Set[ModelFunction],
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designated_values: Set[ModelValue],
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):
assert designated_values <= carrier_set
self.carrier_set = carrier_set
self.logical_operations = logical_operations
self.designated_values = designated_values
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def __str__(self):
result = f"""Carrier Set: {set_to_str(self.carrier_set)}
Designated Values: {set_to_str(self.designated_values)}
"""
for function in self.logical_operations:
result += f"{str(function)}\n"
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return result
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def evaluate_term(
t: Term, f: Dict[PropositionalVariable, ModelValue],
interpretation: Dict[Operation, ModelFunction]) -> ModelValue:
"""
Given a term in a logic, mapping
between terms and model values,
as well as an interpretation
of operations to model functions,
return the evaluated model value.
"""
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if isinstance(t, PropositionalVariable):
return f[t]
model_function = interpretation[t.operation]
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model_arguments: List[ModelValue] = []
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for logic_arg in t.arguments:
model_arg = evaluate_term(logic_arg, f, interpretation)
model_arguments.append(model_arg)
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return model_function(*model_arguments)
def all_model_valuations(
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pvars: Tuple[PropositionalVariable],
mvalues: Tuple[ModelValue]):
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"""
Given propositional variables and model values,
produce every possible mapping between the two.
"""
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all_possible_values = product(mvalues, repeat=len(pvars))
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for valuation in all_possible_values:
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mapping: Dict[PropositionalVariable, ModelValue] = {}
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assert len(pvars) == len(valuation)
for pvar, value in zip(pvars, valuation):
mapping[pvar] = value
yield mapping
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@lru_cache
def all_model_valuations_cached(
pvars: Tuple[PropositionalVariable],
mvalues: Tuple[ModelValue]):
return list(all_model_valuations(pvars, mvalues))
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def satisfiable(logic: Logic, model: Model, interpretation: Dict[Operation, ModelFunction]) -> bool:
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"""
Determine whether a model satisfies a logic
given an interpretation.
"""
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pvars = tuple(get_propostional_variables(tuple(logic.rules)))
mappings = all_model_valuations_cached(pvars, tuple(model.carrier_set))
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for mapping in mappings:
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# Make sure that the model satisfies each of the rules
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for rule in logic.rules:
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# The check only applies if the premises are designated
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premise_met = True
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premise_ts: Set[ModelValue] = set()
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for premise in rule.premises:
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premise_t = evaluate_term(premise, mapping, interpretation)
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# As soon as one premise is not designated,
# move to the next rule.
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if premise_t not in model.designated_values:
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premise_met = False
break
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# If designated, keep track of the evaluated term
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premise_ts.add(premise_t)
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if not premise_met:
continue
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# With the premises designated, make sure the consequent is designated
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consequent_t = evaluate_term(rule.conclusion, mapping, interpretation)
if consequent_t not in model.designated_values:
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return False
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return True
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def model_closure(initial_set: Set[ModelValue], mfunctions: Set[ModelFunction]):
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"""
Given an initial set of model values and a set of model functions,
compute the complete set of model values that are closed
under the operations.
"""
closure_set: Set[ModelValue] = initial_set
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last_new: Set[ModelValue] = initial_set
changed: bool = True
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while changed:
changed = False
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new_elements: Set[ModelValue] = set()
old_closure: Set[ModelValue] = closure_set - last_new
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# arity -> args
cached_args = defaultdict(list)
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# Pass elements into each model function
for mfun in mfunctions:
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# If a previous function shared the same arity,
# we'll use the same set of computed arguments
# to pass into the model functions.
if mfun.arity in cached_args:
for args in cached_args[mfun.arity]:
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# Compute the new elements
# given the cached arguments.
element = mfun(*args)
if element not in closure_set:
new_elements.add(element)
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# We don't need to compute the arguments
# thanks to the cache, so move onto the
# next function.
continue
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# At this point, we don't have cached arguments, so we need
# to compute this set.
# Each argument must have at least one new element to not repeat
# work. We'll range over the number of new model values within our
# argument.
for num_new in range(1, mfun.arity + 1):
new_args = combinations_with_replacement(last_new, r=num_new)
old_args = combinations_with_replacement(old_closure, r=mfun.arity - num_new)
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# Determine every possible ordering of the concatenated
# new and old model values.
for new_arg, old_arg in product(new_args, old_args):
for args in permutations(new_arg + old_arg):
cached_args[mfun.arity].append(args)
element = mfun(*args)
if element not in closure_set:
new_elements.add(element)
closure_set.update(new_elements)
changed = len(new_elements) > 0
last_new = new_elements
return closure_set