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Understanding the Importance of Features and Embeddings in Model Predictions
Representation learning and high quality embeddings are widely used in many applications of machine learning./nEmbeddings are generated by pre-trained models and can be used for tasks such as similarity search or as inputs for downstream models./nTraditional hand-engineered features and embeddings may lead to challenges in interpretation./nThere is a need for an agnostic way of understanding representations in order to interpret model behavior./nIdentifying interpretable subspaces in image representations is an area of interest.