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Improving Text Generation with Embedding Diffusion Models: Addressing Challenges in Embedding Space and Denoising


Conceitos Básicos
Diffusion models have shown great potential for high-quality data generation, but their exploration in the text domain is still at an early stage. This paper systematically studies the optimization challenges encountered with both the embedding space and the denoising model in embedding diffusion models, and proposes effective solutions to address these challenges.
Resumo

The paper explores the use of diffusion models for text generation, which introduces a novel noising paradigm and training objective compared to traditional language models. Recent works have adapted diffusion models to the text domain by converting discrete tokens to embeddings and then utilizing continuous diffusion processes.

The authors identify two key challenges in optimizing embedding diffusion models:

  1. Embedding Space Collapse: The embedding space is learnable for textual data, unlike the stationary data distributions in image and audio domains. This can lead to the collapse of the embedding space and unstable training. To address this, the authors propose an "anchor loss" that effectively regularizes the embeddings and stabilizes the training process.

  2. Denoising Model Degeneration: The authors find that the noise levels introduced by conventional schedules are insufficient for training a desirable denoising model, leading to model degeneration. To mitigate this, they propose a "noise rescaling" framework that adaptively adjusts the noise schedule to prevent degeneration.

Based on these solutions, the authors introduce Difformer, a denoising diffusion Transformer model for text generation. Experiments on various text generation tasks, including machine translation, summarization, and paraphrasing, demonstrate the effectiveness of the proposed techniques and the superiority of Difformer over previous state-of-the-art embedding diffusion models.

The paper also analyzes the inference speed and diversity of Difformer, showing its potential for efficient and high-quality text generation.

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Estatísticas
The embedding space can collapse during training, leading to unstable performance. Insufficient noise levels in the conventional schedules can cause the denoising model to degenerate. Difformer, the proposed model, outperforms previous diffusion-based and iteration-based non-autoregressive baselines on various text generation tasks. Difformer can achieve competitive performance with significantly fewer reverse steps during inference, demonstrating its efficiency.
Citações
"Diffusion models have achieved state-of-the-art synthesis quality on both visual and audio tasks, and recent works further adapt them to textual data by diffusing on the embedding space." "The booming achievements in vision and audio domains inspire researchers to delve into the realm of text generation." "Nonetheless, the exploration is still at an initial stage. Recent works basically convert the discrete tokens to embeddings and then utilize continuous diffusion models to generate them, which can be termed embedding diffusion models."

Principais Insights Extraídos De

by Zhujin Gao,J... às arxiv.org 04-23-2024

https://arxiv.org/pdf/2212.09412.pdf
Empowering Diffusion Models on the Embedding Space for Text Generation

Perguntas Mais Profundas

How can the proposed techniques in this paper be extended to other types of generative models beyond diffusion models

The proposed techniques in this paper, such as the anchor loss and noise rescaling, can be extended to other types of generative models beyond diffusion models by adapting them to suit the specific characteristics and requirements of those models. For instance, the concept of the anchor loss, which helps stabilize training by regularizing embeddings, can be applied to variational autoencoders or generative adversarial networks to improve the quality and stability of generated samples. Similarly, noise rescaling, which addresses the degeneration problem in denoising models, can be integrated into other non-autoregressive models to enhance their performance and prevent model collapse. By customizing and implementing these techniques in different generative models, researchers can potentially improve their effectiveness and robustness across various tasks and datasets.

What are the potential limitations or drawbacks of using diffusion models for text generation compared to autoregressive language models

While diffusion models have shown promising results in text generation tasks, they also have some limitations compared to autoregressive language models. One potential drawback is the slower convergence rate of diffusion models during training, which can lead to longer training times and increased computational resources. Additionally, diffusion models may struggle with capturing long-range dependencies in text sequences, as they rely on a series of denoising steps to generate samples, which can introduce noise and affect the coherence of generated text. Autoregressive models, on the other hand, generate text sequentially and can better capture complex dependencies within the data. Furthermore, diffusion models require careful tuning of hyperparameters, such as noise levels and schedules, to achieve optimal performance, which can be challenging and time-consuming. Overall, while diffusion models offer unique advantages, they also have limitations that researchers need to consider when choosing a text generation approach.

How might the insights from this work on embedding diffusion models inform the development of unified multimodal frameworks that can handle both continuous and discrete data

The insights from this work on embedding diffusion models can inform the development of unified multimodal frameworks that can handle both continuous and discrete data by providing a foundation for integrating different modalities in a cohesive manner. By understanding the challenges and solutions proposed for embedding diffusion models, researchers can apply similar principles to multimodal frameworks to ensure a seamless integration of diverse data types. For example, techniques like the anchor loss, which stabilizes training and regularizes embeddings, can be adapted to multimodal models to maintain consistency and coherence across different modalities. Similarly, noise rescaling methods can be utilized to address degeneration issues in multimodal frameworks, ensuring the quality and diversity of generated outputs. By leveraging the insights from embedding diffusion models, researchers can develop more robust and efficient multimodal frameworks that can handle a wide range of data types and tasks effectively.
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