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XAL: Explainable Active Learning Framework for Text Classification


Konsep Inti
Explainable Active Learning (XAL) enhances text classification by integrating rationales and explanations into the active learning process.
Abstrak

The content introduces XAL, a novel Explainable Active Learning framework for text classification tasks. It addresses the limitations of traditional active learning methods by incorporating explanations to improve model performance. The framework consists of training and data selection processes, utilizing pre-trained encoders and decoders to generate explanations. Experimental results demonstrate the effectiveness of XAL in improving model performance across various text classification tasks.

Introduction

  • Active learning efficiently acquires data for annotation.
  • Traditional AL methods rely on model uncertainty or disagreement.
  • XAL integrates rationales and explanations into AL for improved performance.

Methodology

  • XAL framework includes training with encoder-decoder models.
  • Data selection combines predictive uncertainty and explanation scores.
  • Experiments show consistent improvement over baselines.

Results and Discussion

  • XAL outperforms other AL methods in various text classification tasks.
  • Ablation study confirms the effectiveness of each component in XAL.
  • Human evaluation shows high consistency between generated explanations and model predictions.
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Statistik
XAL achieves consistent improvement over 9 strong baselines in experiments on six datasets.
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Wawasan Utama Disaring Dari

by Yun Luo,Zhen... pada arxiv.org 03-15-2024

https://arxiv.org/pdf/2310.05502.pdf
XAL

Pertanyaan yang Lebih Dalam

How can XAL be adapted for different types of text classification tasks

XAL can be adapted for different types of text classification tasks by adjusting the prompts used for explanation generation and fine-tuning the model on specific datasets. For each new task, a tailored prompt can be designed to elicit explanations that are relevant to the classification labels in that particular domain. Additionally, the hyperparameters such as λ1, λ2, and λ can be fine-tuned based on the characteristics of the new dataset to optimize performance. By customizing these aspects according to the requirements of each task, XAL can effectively handle a wide range of text classification tasks with varying complexities and label distributions.

What are the potential ethical considerations when using AI models like XAL in real-world applications

When using AI models like XAL in real-world applications, several ethical considerations need to be taken into account. One key consideration is transparency - it is essential to ensure that users understand how the model makes decisions and generates explanations for its predictions. This transparency helps build trust with users and stakeholders who rely on the model's outputs. Another important ethical consideration is fairness and bias mitigation. AI models have been known to perpetuate biases present in training data, leading to unfair outcomes for certain groups or individuals. It is crucial to regularly audit models like XAL for bias and take steps to mitigate any identified biases through techniques such as data preprocessing or algorithmic adjustments. Data privacy is also a significant concern when deploying AI models in real-world applications. Models like XAL may require access to sensitive information during training or inference, raising concerns about data security and user privacy protection. Implementing robust data protection measures such as encryption protocols and access controls can help safeguard sensitive information from unauthorized access. Lastly, accountability and responsibility are vital ethical considerations when using AI models like XAL. Organizations deploying these models should establish clear guidelines for monitoring model performance, handling errors or discrepancies, and addressing potential harms caused by incorrect predictions or explanations generated by the model.

How can the concept of explainability be further integrated into machine learning frameworks beyond active learning

To further integrate explainability into machine learning frameworks beyond active learning, researchers can explore various approaches: Interpretable Model Architectures: Developing interpretable deep learning architectures that provide insights into how decisions are made at each layer of the network. Feature Importance Techniques: Utilizing feature importance methods such as SHAP (SHapley Additive exPlanations) or LIME (Local Interpretable Model-agnostic Explanations) across different machine learning algorithms. Rule-based Systems: Incorporating rule-based systems alongside complex ML models allows decision-making processes based on transparent rules rather than black-box algorithms. 4 .Human-in-the-loop Systems: Designing interactive systems where human experts can intervene in decision-making processes guided by explanations provided by ML models. 5 .Ethical Considerations: Ensuring that explainable AI frameworks adhere to ethical principles such as fairness, transparency,and accountability throughout their development and deployment stages. These strategies aim not onlyto enhance interpretability but also foster trustworthinessand reliabilityinAI systemsacrossvariousapplicationsanddomains."
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