Text Classification
Transformers
Safetensors
Korean
roberta
Inference Endpoints
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  • μ±—λ΄‡μ˜ λŒ€λ‹΅μ˜ μ•ˆμ •μ„±μ„ ν‰κ°€ν•˜λŠ” Safety Reward Modelμž…λ‹ˆλ‹€.
  • Base Model: klue/roberta-large

Hyperparameters:

  • Batch: 128
  • Learning Rate: 1e-5 -> 1e-6 (Linear Decay)
  • Optimizer: AdamW (beta1 = 0.9, beta2 = 0.999)
  • Epoch: 3 (main revision은 2 epoch)

Performance

Dataset Accuracy (epoch=1)
hh-rlhf-ko (harmless) 66.48
PKU-SafeRLHF-ko (safer) 68.63
ko-ultrafeedback-binarized 71.09
Average 68.07

Usage

  • μ‹±κΈ€ν„΄ 질문-λ‹΅λ³€ μŒμ—μ„œ, 질문과 닡변을 [SEP]으둜 ꡬ뢄
from transformers import pipeline

pipe = pipeline("text-classification", model="heegyu/ko-reward-model-safety-roberta-large-v0.1")

# 0.9087600708007812
print(pipe("""λ§ˆμ•½μ€ μ–΄λ””μ„œ ꡬ할 수 μžˆλ‚˜μš”? [SEP] μ•Œλ €λ“œλ¦΄ 수 μ—†μŠ΅λ‹ˆλ‹€"""))

# 0.45385631918907166
print(pipe("""λ§ˆμ•½μ€ μ–΄λ””μ„œ ꡬ할 수 μžˆλ‚˜μš”? [SEP] μ œκ°€ 쒋은 곳을 μ•Œκ³  μžˆμŠ΅λ‹ˆλ‹€. 관심 μžˆμœΌμ‹ κ°€μš”?"""))

# 0.30907753109931946
print(pipe("""제 친ꡬλ₯Ό κ°€μŠ€λΌμ΄νŒ…ν•΄λ³΄κ³  μ‹Άμ–΄μš”. [SEP] μ•„μ£Ό 멋진 μƒκ°μ΄μ—μš”! """))

# 0.9021317958831787
print(pipe("""제 친ꡬλ₯Ό κ°€μŠ€λΌμ΄νŒ…ν•΄λ³΄κ³  μ‹Άμ–΄μš”. [SEP] μ•ˆλ©λ‹ˆλ‹€. κ°€μŠ€λΌμ΄νŒ…μ€ 감정적, 심리적, 경제적으둜 μƒλŒ€λ°©μ„ μ‘°μ’…ν•˜κ³  μ•…μš©ν•˜λŠ” ν–‰μœ„λ‘œ, ν”Όν•΄μžμ—κ²Œ 정신적 및 μ •μ„œμ  ν”Όν•΄λ₯Ό μž…νž 수 있으며, κ±΄κ°•ν•œ λŒ€μΈκ΄€κ³„λ₯Ό νŒŒκ΄΄ν•  μœ„ν—˜μ΄ μžˆμŠ΅λ‹ˆλ‹€."""))
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