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Industry's Earnings Forecasts and Market Efficiency

Industry's Earnings Forecasts and Market Efficiency
Author: Antonio Baldaque da Silva
Publisher:
Total Pages:
Release: 2003
Genre:
ISBN:

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In the first chapter, I use historical price, accounting and macroeconomic data to construct alternative forecasts. Using the random walk model as the benchmark, I construct alternative forecasts that significantly increase forecast accuracy in a simulated out-of-sample setting. The most successful alternative combines the forecasts for all industries taking into consideration the "economic" distance between industries.


The Handbook of Corporate Earnings Analysis

The Handbook of Corporate Earnings Analysis
Author: Brian R. Bruce
Publisher: Irwin Professional Publishing
Total Pages: 398
Release: 1994
Genre: Business & Economics
ISBN:

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Crowdsourced Earnings Forecasts

Crowdsourced Earnings Forecasts
Author: Rajiv D. Banker
Publisher:
Total Pages: 57
Release: 2018
Genre:
ISBN:

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We investigate how the arrival of Estimize, a provider of crowdsourced earnings forecasts, impacts IBES analysts' forecast timeliness and facilitates market efficiency. We find that IBES analysts become more responsive to earnings announcements and start issuing their quarterly forecasts earlier when faced with competition from Estimize. The Estimize effect is strongest when Estimize quarterly forecasts pose a direct competitive threat to IBES -- when Estimize forecasts are present within 3 days of earnings announcements (i.e., are issued early). Specifically, IBES analysts become more responsive to earnings announcements post Estimize, and issue more than 9% of their one-quarter-ahead forecasts earlier in the quarter when early Estimize coverage is present in the prior quarter. We also document that this increased responsiveness of IBES analysts facilitates market efficiency as it results in greater immediate market reaction to earnings surprises and mostly eliminates the post-earnings-announcement drift.


Market and Analyst Reactions to Earnings News

Market and Analyst Reactions to Earnings News
Author: Jing Liu
Publisher:
Total Pages: 38
Release: 2004
Genre:
ISBN:

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This study compares the efficiency with which the stock market and financial analysts react to corporate earnings announcements. Results show that the market is more efficient and reacts more rapidly to earnings news than financial analysts. In particular, in pre-announcement quarters (inclusive of announcement day), the market reacts more than analysts, and in post-announcement quarters, analysts gradually catch up. This result is robust across all measures of analyst earnings forecasts and under alternative specifications. Results further show that prior research reached the opposite conclusion because of two questionable research design choices: 1) limiting the window to the first post-announcement quarter (a window too narrow to capture market or analysts' complete reactions); and 2) consideration of just one-quarter-ahead earnings forecasts (an approach that ignores forecasts at other horizons).


Stock Price Reaction to Quarterly Earnings Announcements with Respect of Outlook Changes and Deviation to Consensus Forecast

Stock Price Reaction to Quarterly Earnings Announcements with Respect of Outlook Changes and Deviation to Consensus Forecast
Author: Benjamin Schmitt
Publisher:
Total Pages: 56
Release: 2015-06-12
Genre:
ISBN: 9783656972426

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Bachelor Thesis from the year 2008 in the subject Business economics - Investment and Finance, grade: 1.1, EBS European Business School gGmbH (Finance), language: English, abstract: Many authors have already studied about stock price reactions after earnings announcements yet, which is because of the importance of earnings announcements, in particular quarterly earnings announcements, for many investors. However, all major studies concerning this topic deal with long-term scenarios, the stock's price performance is measured for a time period of at least three quarters. Due to the fact that there are many investors, especially institutional investors such as hedge funds that trade stocks much more frequently, the existing studies are not relevant for them. This paper studies stock price reactions around quarterly earnings announcements for companies listed in Deutscher Aktienindex (DAX) or Midcap DAX (MDAX) with respect to changes of the company's full-year outlook and of earnings surprise regarding analyst consensus forecast within ten days before and after the announcement date. Hence, this paper aims to analyse short-term reaction to quarterly earnings announcements, which are of relevance for all investors, whose investment strategy is, at least partially, focussing on the short-term performance. The main target group of this analysis are therefore hedge funds and investors that run short-term strategies. Due to the fact that the widespread Event Study Methodology is focused on the long-term, it is irrelevant for this analysis.


Stock Analysis in the Twenty-First Century and Beyond

Stock Analysis in the Twenty-First Century and Beyond
Author: Thomas E. Berghage
Publisher: Xlibris Corporation
Total Pages: 240
Release: 2014-07-30
Genre: Business & Economics
ISBN: 1499049072

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Stock Analysis in the Twenty-First Century and Beyond For years, financial analysts have struggled with the fact that practically all the financial measures used to analyze corporate performance lack predictive power when it comes to forecasting the market performance of the company’s stock. Numerous academic studies have documented and reported this lack of predictability. Correlation coefficients close to zero have been reported for the relationship between stock market performance and such critical financial measures as earnings growth, sales growth, price/earnings ratio, return on equity, intrinsic value (models based on discounted cash flow or dividends), and many more. It is this disconnect between traditional financial measures and the performance of stocks in the marketplace that has led to the now-famous efficient market hypothesis, the cornerstone of modern portfolio theory. To accept the idea that the future performance of stocks is unpredictable is to say that nothing a company does will affect the future performance of its stock in the market, and that is absurd. It would be more accurate to say that everything a company does will affect the future performance of its stock in the market. The problem with this statement is that it makes the forecasting of future stock performance so complex that it removes it from the realm of human solution. Confident in the belief that something other than chance and irrational investors determine future stock prices, several research groups around the world have started exploring the use of intelligent computer programs (programs that self-organize based on environmental feedback). Early results are very promising and have provided a glimpse of the economic forces described by Adam Smith as the invisible hand that guides economic activity. Stock Analysis in the Twenty-First Century and Beyond describes the stock analysis problem and explores one of the more successful efforts to harness the new intelligent computer technology. Many people mistakenly classify Artificially Intelligent (AI) computer systems as a form of quantitative analysis. There are two distinct differences between advanced AI systems and traditional quantitative analysis. They are (1) who makes up the selection rules and weighting and (2) what information is used to discriminate between good- and poor-performing securities. In most quantitative systems, even in an advanced expert system form, humans make up the investment rules and mathematically derive the weightings associated with the rules. Computer systems that depend on outside human intelligence to program their actions are not inherently intelligent. In advanced AI systems, the computer makes up its own rules and weightings. The computer learns from examples of good- and poor-performing stocks and determines its own ways for discriminating between them. The procedures that are derived by the computer are often so complex that they defy human understanding. In addition to making up its own rules, advanced AI systems look at corporate financial data differently. Just like in the human brain, where information is not stored in the brain cells but rather in the connections and relationships between cells, so too is corporate performance information stored in the relationships between financial numbers. Assessing the performance of companies is not so much in the numbers as it is in the connections between the numbers. Financial analysts recognized this early on and have used first-order relational information in the form of financial ratios for many years (price/book, debt/equity, current assets / current liabilities, price/earnings, etc.). Now with advanced AI systems, we are finally able to look at and evaluate high-order interrelationships in financial data that have been far too complex to analyze with less sophisticated systems. These then are the fundamental differences between what has been used in the past and what will be used in the future. Cdr. Thomas E. Berghage