Using Textual Information in Annual Reports for Earnings Prediction

碩士 === 國立臺灣大學 === 會計學研究所 === 97 === Earnings prediction has always been a major interest to both the academia and the practitioners. Numerous studies have attempted to develop models for better prediction. The majority of these models incorporate only quantitative accounting data contained in or der...

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Main Authors: Hui-Yu Shih, 石慧妤
Other Authors: Kuo-Tay Chen
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/01379298279501927576
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spelling ndltd-TW-097NTU053850192016-05-04T04:31:32Z http://ndltd.ncl.edu.tw/handle/01379298279501927576 Using Textual Information in Annual Reports for Earnings Prediction 應用企業年報中之文字資訊於盈餘預測之研究 Hui-Yu Shih 石慧妤 碩士 國立臺灣大學 會計學研究所 97 Earnings prediction has always been a major interest to both the academia and the practitioners. Numerous studies have attempted to develop models for better prediction. The majority of these models incorporate only quantitative accounting data contained in or derived from financial statements. However, since accounting data reflects only past performance, the prediction power of these models is not very satisfactory. In contrast, textual information in annual reports contains lots of future-oriented information. This type of information could be more useful for earnings prediction. This study attempts to investigate whether textual information in annual reports is useful for earnings prediction. We build a prediction model that incorporates the positive/negative sentiment as conveyed by the management through the textual information contained in annual reports. We posit that the model can have more prediction power by including such information. We also posit that prediction error of the accounting-based model will be large if the sentiment is more ambiguous, because the future is more uncertain. By comparing the prediction error of our model against those of random walk model, accounting-based model, and analysts’ forecasts, we find that our model is significantly better than the random walk model and the accounting-based model. Even though our model is inferior to analysts’ forecasts, the difference is not significant. We also find that the accounting-based model has less prediction power when the sentiment is more ambiguous. Kuo-Tay Chen 陳國泰 2009 學位論文 ; thesis 66 zh-TW
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description 碩士 === 國立臺灣大學 === 會計學研究所 === 97 === Earnings prediction has always been a major interest to both the academia and the practitioners. Numerous studies have attempted to develop models for better prediction. The majority of these models incorporate only quantitative accounting data contained in or derived from financial statements. However, since accounting data reflects only past performance, the prediction power of these models is not very satisfactory. In contrast, textual information in annual reports contains lots of future-oriented information. This type of information could be more useful for earnings prediction. This study attempts to investigate whether textual information in annual reports is useful for earnings prediction. We build a prediction model that incorporates the positive/negative sentiment as conveyed by the management through the textual information contained in annual reports. We posit that the model can have more prediction power by including such information. We also posit that prediction error of the accounting-based model will be large if the sentiment is more ambiguous, because the future is more uncertain. By comparing the prediction error of our model against those of random walk model, accounting-based model, and analysts’ forecasts, we find that our model is significantly better than the random walk model and the accounting-based model. Even though our model is inferior to analysts’ forecasts, the difference is not significant. We also find that the accounting-based model has less prediction power when the sentiment is more ambiguous.
author2 Kuo-Tay Chen
author_facet Kuo-Tay Chen
Hui-Yu Shih
石慧妤
author Hui-Yu Shih
石慧妤
spellingShingle Hui-Yu Shih
石慧妤
Using Textual Information in Annual Reports for Earnings Prediction
author_sort Hui-Yu Shih
title Using Textual Information in Annual Reports for Earnings Prediction
title_short Using Textual Information in Annual Reports for Earnings Prediction
title_full Using Textual Information in Annual Reports for Earnings Prediction
title_fullStr Using Textual Information in Annual Reports for Earnings Prediction
title_full_unstemmed Using Textual Information in Annual Reports for Earnings Prediction
title_sort using textual information in annual reports for earnings prediction
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/01379298279501927576
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