Litcius/Paper detail

Consumer price index prediction using Long Short Term Memory (LSTM) based cloud computing

Soffa Zahara, Sugianto Sugianto, Muhammad Bahril Ilmiddaviq

2020Journal of Physics Conference Series21 citationsDOIOpen Access PDF

Abstract

Abstract Long Short Term Memory (LSTM) is known as optimized Recurrent Neural Network (RNN) architectures that overcome the lack of RNN’s about maintaining long period of memories information. As part of machine learning networks, LSTM also notable as the right choice for time-series prediction. 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 Long Short Term Memory Method. The network model input consists of 34 variables of staple price in Surabaya and the output is CPI value. In the interest of predictive 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 result indicate that Nesterov Adam has 4.088 RMSE’s value, less than other algorithm which indicate the most accurate optimization algorithm to predict CPI value.

Topics & Concepts

Inflation (cosmology)Computer scienceConsumer price index (South Africa)Index (typography)Term (time)Gradient descentArtificial neural networkEconometricsStochastic gradient descentRecurrent neural networkValue (mathematics)Long short term memoryArtificial intelligenceMachine learningMonetary policyEconomicsTheoretical physicsMonetary economicsWorld Wide WebPhysicsQuantum mechanicsTraffic Prediction and Management TechniquesStock Market Forecasting MethodsTime Series Analysis and Forecasting