Recommendation system to predict movie rating given by user on Netflix.
-
Updated
Oct 7, 2020 - Jupyter Notebook
Recommendation system to predict movie rating given by user on Netflix.
Electric Load forecasting for a year on hourly basis using 3 different techniques. - linear Regression, - ANN (Using Matlab nntool), -K-Nearest Neighbor. All 3 codes are present with an detailed report on each technique.
Splitting data, Moving Average, Time series decomposition plot, ACF plots and PACF plots, Evaluation Metric MAPE, Simple Exponential Method, Holt method, Holts winter exponential smoothing with additive seasonality and additive trend, Holts winter exponential smoothing with multiplicative seasonality and additive trend, Final Model by combining …
BI Master - Trabalho final da disciplina de Redes Neurais - Redes recorrentes LSTM, GRU. Métricas de avaliação RMSE, MSE, MAPE e MAE.
This is an linear approach machine learning model used to predict the values of variable(dependent) based on other variables(independent).
Using MS Excel and R, accurately forecasted total core deposit data from a Richmond Bank. The Holt’s Linear Exponential Smoothing had the overall lowest “Quick and Dirty” MAPE (1.2%), the lowest overall Maximum MAPE (3.49%), and consistently more accurate projections for each of the forecast horizons. Overall, the Unaided, Holts Linear Exponenti…
Implementation of a simple linear regression with single feature
Forecasting time series data using ARIMA models. Used covariance matrix to find dependencies between stocks.
Project to predict production quantities for a given dataset using Machine Learning algorithms.
in this repository we intend to predict Google and Apple Stock Prices Using Long Short-Term Memory (LSTM) Model in Python. Long Short-Term Memory (LSTM) is one type of recurrent neural network which is used to learn order dependence in sequence prediction problems. Due to its capability of storing past information, LSTM is very useful in predict…
Sober truths: Predict the number of fatalities and alcohol-impaired driving crashes
Swarm intelligence aims at exploring the complicated relationships among multi-agents to stimulate co-evolution and the emergence of intelligent decision-making. Based on Multi-agent Particle Environment and deep Reinforcement learning method, we propose ...
Distributed and decentralized MAPE-K loops framework
Basic to complex prediction model using exhaustive selector & Lasso
This repository has the implementation of Performance Metrics (e.g. F1 score, AUC, Accuracy, etc) from scratch, without using Scikit Learn library.
Sales forecasting is an essential task for the management of a store. Machine learning can help us discover the factors that influence sales in a retail store and estimate the number of sales in the near future.
Add a description, image, and links to the mape topic page so that developers can more easily learn about it.
To associate your repository with the mape topic, visit your repo's landing page and select "manage topics."