Predicting Stock Prices Based on Neural Networks Around Earnings Announcements

2020 ◽  
Vol 22 (6) ◽  
pp. 2667-2678
Author(s):  
Jinhua Cui ◽  
Soonho Kim
1996 ◽  
Vol 11 (4) ◽  
pp. 535-564 ◽  
Author(s):  
Morton Pincus ◽  
Charles E. Wasley

We examine the behavior of stock prices at the time of post-1974–75 LIFO adoption announcements. We exploit recent theoretical and empirical developments in the LIFO adoption literature in an attempt to resolve some of the mixed findings in Hand (1993). We study LIFO adoptions announced prior to as well as at the time of annual earnings announcements. Previous research has mostly centered on 1974–75 adoptions made at the time of annual earnings announcements. Our study of LIFO adoptions announced prior to annual earnings announcement dates enables us to provide evidence on whether the early announcement of a LIFO adoption is used by firms to signal positive information about earnings growth. Collectively, our results suggest that in explaining the market response to LIFO adoption announcements, extant models of the LIFO adoption decision do not fully capture the richness of differing inflationary environments or of alternative disclosure times.


Author(s):  
Omisore Olatunji Mumini ◽  
Fayemiwo Michael Adebisi ◽  
Ofoegbu Osita Edward ◽  
Adeniyi Shukurat Abidemi

Stock trading, used to predict the direction of future stock prices, is a dynamic business primarily based on human intuition. This involves analyzing some non-linear fundamental and technical stock variables which are recorded periodically. This study presents the development of an ANN-based prediction model for forecasting closing price in the stock markets. The major steps taken are identification of technical variables used for prediction of stock prices, collection and pre-processing of stock data, and formulation of the ANN-based predictive model. Stock data of periods between 2010 and 2014 were collected from the Nigerian Stock Exchange (NSE) and stored in a database. The data collected were classified into training and test data, where the training data was used to learn non-linear patterns that exist in the dataset; and test data was used to validate the prediction accuracy of the model. Evaluation results obtained from WEKA shows that discrepancies between actual and predicted values are insignificant.


Author(s):  
Avraam Tsantekidis ◽  
Nikolaos Passalis ◽  
Anastasios Tefas ◽  
Juho Kanniainen ◽  
Moncef Gabbouj ◽  
...  

Information ◽  
2020 ◽  
Vol 11 (6) ◽  
pp. 292 ◽  
Author(s):  
Masahiro Suzuki ◽  
Hiroki Sakaji ◽  
Kiyoshi Izumi ◽  
Hiroyasu Matsushima ◽  
Yasushi Ishikawa

This paper proposes and analyzes a methodology of forecasting movements of the analysts’ net income estimates and those of stock prices. We achieve this by applying natural language processing and neural networks in the context of analyst reports. In the pre-experiment, we applied our method to extract opinion sentences from the analyst report while classifying the remaining parts as non-opinion sentences. Then, we performed two additional experiments. First, we employed our proposed method for forecasting the movements of analysts’ net income estimates by inputting the opinion and non-opinion sentences into separate neural networks. Besides the reports, we inputted the trend of the net income estimate to the networks. Second, we employed our proposed method for forecasting the movements of stock prices. Consequently, we found differences between security firms, which depend on whether analysts’ net income estimates tend to be forecasted by opinions or facts in the context of analyst reports. Furthermore, the trend of the net income estimate was found to be effective for the forecast as well as an analyst report. However, in experiments of forecasting movements of stock prices, the difference between opinion sentences and non-opinion sentences was not effective.


2003 ◽  
Vol 78 (1) ◽  
pp. 1-37 ◽  
Author(s):  
Frank Heflin ◽  
K. R. Subramanyam ◽  
Yuan Zhang

On October 23, 2000, the SEC implemented Regulation FD (Fair Disclosure), which prohibits firms from privately disclosing value-relevant information to select securities markets professionals without simultaneously disclosing the same information to the public. We examine whether Regulation FD's prohibition of selective disclosure impairs the flow of financial information to the capital markets prior to earnings announcements. After implementation of FD, we find (1) improved informational efficiency of stock prices prior to earnings announcements, as evidenced by smaller deviations between pre-and post-announcement stock prices; (2) no reliable evidence of change in analysts' earnings forecast errors or dispersion; and (3) a substantial increase in the volume of firms' voluntary, forward-looking, earnings-related disclosures. Overall, we find no evidence Regulation FD impaired the information available to investors prior to earnings announcements, and some of our evidence is consistent with improvement.


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