核心概念
The author presents a Multimodal Counterfactual Inference Sentiment (MCIS) framework to address harmful biases in Multimodal Sentiment Analysis, focusing on label and context biases. By leveraging causal inference and counterfactual intuition, MCIS aims to improve model performance by purifying biases.
摘要
The content delves into the challenges of dataset biases in Multimodal Sentiment Analysis, particularly focusing on label bias and context bias. The proposed MCIS framework utilizes causal graphs and counterfactual scenarios to mitigate these biases effectively. Through extensive experiments on standard benchmarks, the effectiveness of the framework is demonstrated.
Key points:
- Multimodal Sentiment Analysis aims to understand human intentions through diverse modalities.
- Dataset biases like label bias and context bias hinder model performance by leading to inaccurate predictions.
- The MCIS framework leverages causal inference and counterfactual intuition to purify biases for unbiased predictions.
- Extensive experiments show significant improvements in model performance with MCIS implementation.
統計資料
"The distribution of sentiment labels and several context words from the training set on the MOSI dataset."
"Binary classification results for illustration."
引述
"Believe nothing you hear, and only one half that you see." - Edgar Allan Poe