Add score_answer method to word_ladder (#93)

* Add score_answer method to word_ladder
* add unit test for WordLadderDataset::score_answer()

---------

Co-authored-by: Andreas Koepf <andreas.koepf@provisio.com>
This commit is contained in:
Adefioye 2025-02-10 08:15:23 -06:00 committed by GitHub
parent f6060f4d97
commit bea9e6d96a
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2 changed files with 92 additions and 18 deletions

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@ -5,8 +5,7 @@ from dataclasses import dataclass
from random import Random
from typing import Dict, List, Optional, Set, Tuple
from reasoning_gym.data import read_data_file
from ..data import get_data_file_path
from ..factory import ProceduralDataset, register_dataset
@ -64,6 +63,7 @@ class WordLadderDataset(ProceduralDataset):
self.config = config
self.word_sets = {}
self.word_graphs = {}
self._vocabulary = None # A large list of dictionary words to validate words against
# Load words from CSV
self.word_sets = self._load_words_from_csv(
@ -84,28 +84,24 @@ class WordLadderDataset(ProceduralDataset):
assert 3 <= min_length <= max_length <= 5, "Word length must be between 3 and 5 inclusive"
import csv
from io import StringIO
word_sets = {}
try:
# Get CSV content as string
csv_content = read_data_file("words.csv")
with get_data_file_path("words.csv").open("r", encoding="utf-8") as csv_file:
reader = csv.DictReader(csv_file)
# Use StringIO to create a file-like object from the string
csv_file = StringIO(csv_content)
reader = csv.DictReader(csv_file)
for row in reader:
# Process each word length column using config range
for length in range(min_length, max_length + 1):
col_name = f"{length}_letter"
word = row.get(col_name, "")
for row in reader:
# Process each word length column using config range
for length in range(min_length, max_length + 1):
col_name = f"{length}_letter"
word = row.get(col_name, "")
if not word: # Skip empty entries
continue
if not word: # Skip empty entries
continue
word_sets.setdefault(length, set()).add(word.upper())
word_sets.setdefault(length, set()).add(word.upper())
except Exception as e:
raise RuntimeError(f"Error processing words.csv content: {e}") from e
@ -220,5 +216,43 @@ class WordLadderDataset(ProceduralDataset):
"metadata": {"start_word": start, "end_word": end, "word_length": length, "chain_length": len(path)},
}
def score_answer(self, answer: Optional[str], entry: Dict[str, any]) -> float:
if answer is None:
return 0
answer_words = tuple(s.strip() for s in answer.upper().split(","))
metadata = entry["metadata"]
start_word = metadata["start_word"]
end_word = metadata["end_word"]
word_length = len(end_word)
known_words = self.word_sets[word_length]
# Check conditions:
# 1. start and end word match question
# 2. all words have the correct length
# 3. every changed word is a single letter change from the previous word
# 4. all words are in our vocabulary
if len(answer_words) < 2:
return 0
if answer_words[0] != start_word or answer_words[-1] != end_word:
return 0.01
if not all(len(w) == word_length for w in answer_words):
return 0.01
for i in range(1, len(answer_words)):
if sum(1 for a, b in zip(answer_words[i - 1], answer_words[i]) if a != b) != 1:
return 0.01
reward = 1.0
for word in answer_words:
if not word in known_words:
reward *= 0.5
return reward
register_dataset("word_ladder", WordLadderDataset, WordLadderConfig)