This story was originally published on HackerNoon at: https://hackernoon.com/effective-anomaly-detection-pipeline-for-amazon-reviews-references-and-appendix). Explore findings from a study on an anomaly detection pipeline for Amazon reviews using MPNet embeddings. Check more stories related to machine-learning at: https://hackernoon.com/c/machine-learning). You can also check exclusive content about #transformers), #anomaly-detection), #nlp-for-anomaly-detection), #explainability-in-ml), #machine-learning-classifiers), #text-specific-ad-models), #text-encoding-techniques), #explainable-ai), and more.
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This study introduces an effective pipeline for detecting anomalous Amazon reviews using MPNet embeddings. It evaluates SHAP, term frequency, and GPT-3 for explainability, revealing user preferences and computational challenges. Future research may explore broader surveys and integrating GPT-3 throughout the pipeline for enhanced performance.