Abstract

Long Short Term Memory (LSTM) is known as optimized Recurrent Neural Network (RNN) architectures that overcome RNN’s lact about maintaining long period of memories. As part of machine learning networks, LSTM also notable as the right choice for time-series prediction. Currently, machine learning is a burning issue in economic world, abundant studies such predicting macroeconomic and microeconomics indicators are emerge. Inflation rate has been used for decision making for central banks also private sector. In Indonesia, CPI (Consumer Price Index) is one of best practice inflation indicators besides Wholesale Price Index and The Gross Domestic Product (GDP). Since CPI data could be used as a direction for next inflation move, we conducted CPI prediction model using LSTM method. The network model input consists of 28 variables of staple price in Surabaya and the output is CPI value, also the entire development of prediction model are done in Amazon Web Service (AWS) Cloud. In the interest of accuracy improvement, we used several optimization algorithm i.e. Stochastic Gradient Descent (sgd), Root Mean Square Propagation (RMSProp), Adaptive Gradient(AdaGrad), Adaptive moment (Adam), Adadelta, Nesterov Adam (Nadam) and Adamax. The results indicate that Nadam has 4,008 RMSE’s value, less than other algorithm which indicate the most accurate optimization algorithm to predict CPI value.

Highlights

  • Long Short Term Memory (LSTM) is known as optimized Recurrent Neural Network (RNN) architectures that overcome RNN’s lact about maintaining long period of memories

  • The results indicate that Nesterov Adam (Nadam) has 4,008 RMSE’s value, less than other algorithm which indicate the most accurate optimization algorithm to predict CPI value

  • Jumlah data training dan testing maupun penambahan variabel input dengan harapan mampu menambah nilai akurasi dari model prediksi

Read more

Summary

34. Buncis

Setelah model prediksi selesai lalu dilakukan evaluasi Dalam penelitian ini hanya memakai harga bahan performansi akurasi dengan membandingkan 7 makanan pokok dikarenakan data harga makanan algoritma performansi. Mengalami fluktuasi yang cukup sering sehingga lebih cocok dijadikan data untuk prediksi. Statistik (BPS) Jawa Timur periode pengambilan yang sama dari tahun 2014 sampai 2018

Pengambilan Data
Preprocessing
33. Wortel
34 Jenis Harga
Evaluasi Model dengan Algoritma Optimasi
Hasil dan Pembahasan
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call