Some methods in software development recommendation systems

2013;
: ст. 74 – 78
Автори: 
Stekh Y., Artsibasov V.

Lviv Polytechnic National University, CAD Departament 

Проаналізовано сучасний стан моделей і методів побудови рекомендаційних систем. Виділено основні класи задач, які розв’язують рекомендаційні системи. Показано особливості застосування методу спільної фільтрації. Розроблено метод розрахунку коефіцієнтів подібності, який враховує розрідженість векторів рейтингів товарів і користувачів.

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