Quantifying the Effects of Recommendation Systems

4 Feb 2020 Sunshine Chong Andrés Abeliuk

Recommendation systems today exert a strong influence on consumer behavior and individual perceptions of the world. By using collaborative filtering (CF) methods to create recommendations, it generates a continuous feedback loop in which user behavior becomes magnified in the algorithmic system... (read more)

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