144 lines
7.9 KiB
Markdown
144 lines
7.9 KiB
Markdown
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# Perplexity of fixed-length models
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[[open-in-colab]]
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Perplexity (PPL) is one of the most common metrics for evaluating language models. Before diving in, we should note
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that the metric applies specifically to classical language models (sometimes called autoregressive or causal language
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models) and is not well defined for masked language models like BERT (see [summary of the models](model_summary)).
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Perplexity is defined as the exponentiated average negative log-likelihood of a sequence. If we have a tokenized
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sequence \\(X = (x_0, x_1, \dots, x_t)\\), then the perplexity of \\(X\\) is,
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$$\text{PPL}(X) = \exp \left\{ {-\frac{1}{t}\sum_i^t \log p_\theta (x_i|x_{<i}) } \right\}$$
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where \\(\log p_\theta (x_i|x_{<i})\\) is the log-likelihood of the ith token conditioned on the preceding tokens \\(x_{<i}\\) according to our model. Intuitively, it can be thought of as an evaluation of the model's ability to predict uniformly among the set of specified tokens in a corpus. Importantly, this means that the tokenization procedure has a direct impact on a model's perplexity which should always be taken into consideration when comparing different models.
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This is also equivalent to the exponentiation of the cross-entropy between the data and model predictions. For more
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intuition about perplexity and its relationship to Bits Per Character (BPC) and data compression, check out this
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[fantastic blog post on The Gradient](https://thegradient.pub/understanding-evaluation-metrics-for-language-models/).
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## Calculating PPL with fixed-length models
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If we weren't limited by a model's context size, we would evaluate the model's perplexity by autoregressively
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factorizing a sequence and conditioning on the entire preceding subsequence at each step, as shown below.
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<img width="600" alt="Full decomposition of a sequence with unlimited context length" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/ppl_full.gif"/>
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When working with approximate models, however, we typically have a constraint on the number of tokens the model can
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process. The largest version of [GPT-2](model_doc/gpt2), for example, has a fixed length of 1024 tokens, so we
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cannot calculate \\(p_\theta(x_t|x_{<t})\\) directly when \\(t\\) is greater than 1024.
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Instead, the sequence is typically broken into subsequences equal to the model's maximum input size. If a model's max
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input size is \\(k\\), we then approximate the likelihood of a token \\(x_t\\) by conditioning only on the
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\\(k-1\\) tokens that precede it rather than the entire context. When evaluating the model's perplexity of a
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sequence, a tempting but suboptimal approach is to break the sequence into disjoint chunks and add up the decomposed
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log-likelihoods of each segment independently.
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<img width="600" alt="Suboptimal PPL not taking advantage of full available context" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/ppl_chunked.gif"/>
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This is quick to compute since the perplexity of each segment can be computed in one forward pass, but serves as a poor
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approximation of the fully-factorized perplexity and will typically yield a higher (worse) PPL because the model will
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have less context at most of the prediction steps.
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Instead, the PPL of fixed-length models should be evaluated with a sliding-window strategy. This involves repeatedly
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sliding the context window so that the model has more context when making each prediction.
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<img width="600" alt="Sliding window PPL taking advantage of all available context" src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/ppl_sliding.gif"/>
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This is a closer approximation to the true decomposition of the sequence probability and will typically yield a more
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favorable score. The downside is that it requires a separate forward pass for each token in the corpus. A good
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practical compromise is to employ a strided sliding window, moving the context by larger strides rather than sliding by
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1 token a time. This allows computation to proceed much faster while still giving the model a large context to make
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predictions at each step.
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## Example: Calculating perplexity with GPT-2 in 🤗 Transformers
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Let's demonstrate this process with GPT-2.
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```python
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from transformers import GPT2LMHeadModel, GPT2TokenizerFast
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device = "cuda"
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model_id = "openai-community/gpt2-large"
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model = GPT2LMHeadModel.from_pretrained(model_id).to(device)
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tokenizer = GPT2TokenizerFast.from_pretrained(model_id)
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```
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We'll load in the WikiText-2 dataset and evaluate the perplexity using a few different sliding-window strategies. Since
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this dataset is small and we're just doing one forward pass over the set, we can just load and encode the entire
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dataset in memory.
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```python
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from datasets import load_dataset
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test = load_dataset("wikitext", "wikitext-2-raw-v1", split="test")
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encodings = tokenizer("\n\n".join(test["text"]), return_tensors="pt")
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```
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With 🤗 Transformers, we can simply pass the `input_ids` as the `labels` to our model, and the average negative
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log-likelihood for each token is returned as the loss. With our sliding window approach, however, there is overlap in
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the tokens we pass to the model at each iteration. We don't want the log-likelihood for the tokens we're just treating
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as context to be included in our loss, so we can set these targets to `-100` so that they are ignored. The following
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is an example of how we could do this with a stride of `512`. This means that the model will have at least 512 tokens
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for context when calculating the conditional likelihood of any one token (provided there are 512 preceding tokens
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available to condition on).
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```python
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import torch
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from tqdm import tqdm
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max_length = model.config.n_positions
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stride = 512
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seq_len = encodings.input_ids.size(1)
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nlls = []
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prev_end_loc = 0
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for begin_loc in tqdm(range(0, seq_len, stride)):
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end_loc = min(begin_loc + max_length, seq_len)
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trg_len = end_loc - prev_end_loc # may be different from stride on last loop
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input_ids = encodings.input_ids[:, begin_loc:end_loc].to(device)
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target_ids = input_ids.clone()
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target_ids[:, :-trg_len] = -100
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with torch.no_grad():
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outputs = model(input_ids, labels=target_ids)
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# loss is calculated using CrossEntropyLoss which averages over valid labels
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# N.B. the model only calculates loss over trg_len - 1 labels, because it internally shifts the labels
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# to the left by 1.
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neg_log_likelihood = outputs.loss
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nlls.append(neg_log_likelihood)
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prev_end_loc = end_loc
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if end_loc == seq_len:
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break
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ppl = torch.exp(torch.stack(nlls).mean())
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```
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Running this with the stride length equal to the max input length is equivalent to the suboptimal, non-sliding-window
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strategy we discussed above. The smaller the stride, the more context the model will have in making each prediction,
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and the better the reported perplexity will typically be.
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When we run the above with `stride = 1024`, i.e. no overlap, the resulting PPL is `19.44`, which is about the same
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as the `19.93` reported in the GPT-2 paper. By using `stride = 512` and thereby employing our striding window
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strategy, this jumps down to `16.45`. This is not only a more favorable score, but is calculated in a way that is
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closer to the true autoregressive decomposition of a sequence likelihood.
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