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Automated Feature Engineering

Presented by Namita Lokare Feature engineering plays a significant role in the success of a machine learning model. Most of the effort in training a model goes into data preparation and choosing the right representation. In this talk, I will focus on a robust feature engineering method, Randomized U...

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Détails bibliographiques
Auteur principal: Salon, Data (Auteur)
Collectivité auteur: Safari, an O'Reilly Media Company
Format: Électronique Vidéo
Langue:Inglés
Publié: Data Science Salon, 2019.
Édition:1st edition.
Sujets:
Accès en ligne:Texto completo (Requiere registro previo con correo institucional)
Description
Résumé:Presented by Namita Lokare Feature engineering plays a significant role in the success of a machine learning model. Most of the effort in training a model goes into data preparation and choosing the right representation. In this talk, I will focus on a robust feature engineering method, Randomized Union of Locally Linear Subspaces (RULLS). We generate sparse, non-negative, and rotation invariant features in an unsupervised fashion. RULLS aggregates features from a random union of subspaces by describing each point using globally chosen landmarks. These landmarks serve as anchor points for choosing subspaces. Our method provides a way to select features that are relevant in the neighborhood around these chosen landmarks. Distances from each data point to k closest landmarks are encoded in the feature matrix. The final feature representation is a union of features from all chosen subspaces. The effectiveness of our algorithm is shown on various real-world datasets for tasks such as clustering and classification of raw data and in the presence of noise. We compare our method with existing feature generation methods. Results show a high performance of our method on both classification and clustering tasks.
Description matérielle:1 online resource (1 video file, approximately 18 min.)