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The Change in Financial Analysts' Forecast Attributes for Value and Growth Stocks

The Change in Financial Analysts' Forecast Attributes for Value and Growth Stocks
Author: Pieter Johannes De Jong
Publisher: ProQuest
Total Pages:
Release: 2007
Genre: Economic forecasting
ISBN: 9780549145035

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This research will concentrate on the changes in earnings forecasts, forecast accuracy and forecast dispersion for growth and value stocks after Reg FD. Each topic is presented in a separate essay. The first essay tests if growth and value stock returns respond more to forecasted earnings changes than they do to changes in earnings and whether these stock returns respond in a different fashion before and after Reg FD. This phenomenon is stronger for growth stock portfolio strategies than it is for value stock portfolios. After Reg FD, the overall impact of earnings expectations on stock returns is smaller, especially for growth stock returns. The second essay examines financial analysts' earnings forecast accuracy in value and growth stocks before and after the introduction of Reg FD. Accuracy for both stock groups (value and growth stocks) has improved after the introduction of Reg FD. The results in this essay provide additional evidence indicating that analysts did not just misinterpret available news but consciously tried to maintain relationships with managers. However, Reg FD efficiently limited these relationships between managers of growth firms and analysts so that the monetary advantage from manipulating earnings forecasts before the introduction of Reg FD no longer exists. The third essay evaluates the hypothesis stating that forecast dispersion, on both growth and value stock returns, has increased after the introduction Reg FD. However, the increased dispersion found at the second quarter of 2001 drastically dissipates at the second quarter of 2002, although value stock forecast dispersion before earnings announcement and value stock belief jumbling remain higher. The results in this essay suggest that corporate voluntary disclosure created a greater variety of opinions and, therefore, more uncertainty about value stocks. Also, value stock returns have a stronger inverse relationship with dispersion because financial analysts have become more uncertain about value firms' performance. The bigger the disagreement about a stock's value, the higher the market price relative to the true value of the stock, and the lower its future return.


Three Essays on Financial Analysts' Stock Price Forecasts

Three Essays on Financial Analysts' Stock Price Forecasts
Author: Quoc Tuan Quoc Ho
Publisher:
Total Pages:
Release: 2013
Genre:
ISBN:

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In this thesis, I study three aspects of sell-side analysts' stock price forecasts, henceforth target prices: analyst teams' target price forecast characteristics, analysts' use of information to revise target prices, and determinants of target price disagreement between analysts. The first essay studies the target price forecast performance of team analysts in the UK and finds that teams issue timelier but not less accurate target prices. Unlike evidence from previous studies, my findings suggest that analyst teamwork may improve forecast timeliness without sacrificing forecast accuracy. However, market reactions to team target price revisions are not significantly different from those to individual analyst target price revisions, suggesting that although target prices issued by analyst teams are timelier and not less accurate than those of individual analysts, investors do not consider analyst team target prices more informative. I conjecture that analysts may work in teams to meet the demand to cover more companies while maintaining the quality of research by individual team members rather than to issue more informative reports. In the second essay, I study how analysts revise their target prices in response to new information implicit in recent market returns, stock excess returns and other analysts' target price revisions. The results suggest that analysts' target price revisions are significantly influenced by market returns, stock excess return and other analysts' target price revisions. I also find that the correlation between target price revisions and stock excess returns is significantly higher when the news implicit in these returns is bad rather than good. I conjecture that analysts discover more bad news from the information in stock excess returns because firms tend to withhold bad news, disclosing it only when it becomes inevitable, while they disclose good news early. Using a new measure of bad to good news concentration, I show that the asymmetric responsiveness of target price revisions to positive and negative stock excess returns is significant for firms with the highest concentration of bad news but is insignificant for firms with the lowest concentration of bad news. I argue that firms with the highest concentration of bad news are more likely to withhold and accumulate bad news. The findings, therefore, support my hypothesis that analysts discover more bad news than good news from stock returns because firms tend to withhold bad news, disclosing it only when it is inevitable. The third essay examines the determinants of analyst target price disagreement. I find that while disagreement in short-term earnings and in long-term earnings growth forecasts are significant determinants, recent 12-month idiosyncratic return volatility has the strongest explanatory power for target price disagreement. The findings suggest that target price disagreement is driven not only by analyst disagreement about short-term earnings and long-term earnings growth, but also by differences in analysts' opinions about the impact of recent firm-specific events on value drivers beyond short-term future earnings and long-term growth, which are eventually reflected in past idiosyncratic return volatility.


Do Financial Analysts' Long-Term Growth Forecasts Matter? Evidence from Stock Recommendations and Career Outcomes

Do Financial Analysts' Long-Term Growth Forecasts Matter? Evidence from Stock Recommendations and Career Outcomes
Author: Boochun Jung
Publisher:
Total Pages: 49
Release: 2015
Genre:
ISBN:

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Prior literature refers to economic incentives to generate investment banking business and trading commissions as explanations for analyst publication of forecasts of firms' long-term earnings growth (LTG). Prior research also documents wildly optimistic LTG forecasts and a negative relation between LTG forecasts and subsequent excess returns. Thus, the literature portrays analysts' LTG forecasts as nonsensical from a valuation perspective. We introduce and investigate a new perspective on the value-relevance of analyst publication of LTG forecasts. We hypothesize that analysts issuing LTG forecasts signal relatively high effort and ability in developing perspective of the subject firms' long-term prospects. Consistent with this hypothesis, we find that the stock market responds more strongly to the stock recommendation revisions of analysts who publish accompanying LTG forecasts. In addition, we hypothesize and find that analysts issuing LTG forecasts are less likely to leave the profession or move to smaller brokerage houses. Consistent with Reg. FD's intention to restrict analyst access to insider information and promote fundamental analysis of the valuation implications of firms' long-term prospects, we find that post-Reg. FD observations drive most of our results. Overall, we identify previously undocumented benefits accruing to analysts who publish LTG forecasts.


Long-range Forecasting

Long-range Forecasting
Author: William S. Gray
Publisher:
Total Pages: 124
Release: 1999
Genre: Business & Economics
ISBN:

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The Frequency of Financial Analysts' Forecast Revisions

The Frequency of Financial Analysts' Forecast Revisions
Author: Pamela S. Stuerke
Publisher:
Total Pages: 34
Release: 2014
Genre:
ISBN:

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This paper develops a theory of the frequency of financial analysts' forecast revisions and then tests the empirical predictions of the model. Financial analysts act as information intermediaries for firms and investors and therefore their forecast revision frequency helps explain the equilibrium of the supply of and demand for earnings predictions and assessments of firm value. The theory is based on the analyst's costs of information gathering and the profits obtained from selling the information to investors. Our analysis is conducted in two stages. In the first stage, a single-period, Kyle (1985) model is used to determine the profits generated by privately informed investors who trade on the analyst's forecast revision. The analyst is assumed to be compensated as a function of these profits. In the second stage, the analyst's optimal revision frequency to collect and sell private information is determined. We find that the analyst's optimal revision frequency is increasing in the variance of liquidity trading volume, the volatility of the underlying earnings process, and the earnings-response coefficient and decreasing in the total number of informed traders who invest in the firm and the cost of revision. These theoretical results are developed into empirical hypotheses that the frequency of analysts' forecast revisions between earnings announcements is positively associated with variability of the earnings process, average prior trading volume, and earnings response coefficients, and negatively associated with skewness of prior trading volume, after controlling for firm size and prior average daily stock price changes. These hypotheses are tested cross-sectionally and we find significant support each of the hypothesized relations.


The Effect of Analysts' Forecasts on Stock Market Returns

The Effect of Analysts' Forecasts on Stock Market Returns
Author: Stefano Bonini
Publisher:
Total Pages: 50
Release: 2009
Genre:
ISBN:

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Stock returns forecasting is one of the major objectives of financial analysts. Equity Analysts' forecasts, on the other side, are one of the major sources of information used by less informed investors in their asset allocation decisions. Therefore, analysing which major drivers affect time series of stock returns could allow to shed light over the price revelation process in capital markets. In this paper we propose a model aimed at predicting stock market by combining both macroeconomic and microeconomic factors. We first develop a standard APT approach with multiple macroeconomic factors as regressors. We then integrate the model by explicitly including a metric for intrinsic equity value, basing upon a proxy derived by the weighted average of Stock Market Consensus Forecasts by equity analysts. Third, we complete the model by imposing an ARMA specification for the error term, which allows identifying stock returns' stationarity moving over time. The resulting model shows both a strong fitting capability when tested in the in-sample period and a good predictive capability when applied to an out-of-sample period of monthly Italian stock market returns. In particular, we employed specific estimation procedures based upon recently developed statistics aimed at testing for both factors' equal predicting power and forecast encompassing. As a major empirical finding, our model suggests that the information conveyed by analysts' forecasts is indeed a factor in determining future stock prices, even if there is the possibility that the information transferred could be biased.


Essays on Financial Analysts' Forecasts

Essays on Financial Analysts' Forecasts
Author: Marius del Giudice Rodriguez
Publisher:
Total Pages: 132
Release: 2006
Genre: Corporate profits
ISBN:

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This dissertation contains three self-contained chapters dealing with specific aspects of financial analysts' earnings forecasts. After recent accounting scandals, much attention has turned to the incentives present in the career of professional financial analysts. The literature points to several reasons why financial analysts behave overoptimistically when providing their predictions. In particular, analysts may wish to maintain good relations with firm management, to please the underwriters and brokerage houses at which they are employed, and to broaden career choice. While the literature has focused more on analysts' strategic behavior in these situations, less attention has been paid to the implications these factors have on financial analysts' loss functions. The loss function dictates the criteria that analysts use in order to build their forecasts. Using a simple compensation scheme in which the sign of prediction errors affect their incomes differently, in the first chapter we examine the implications this has on their loss function. We show that depending on the contract offered, analysts have a strict preference for under-prediction or over-prediction and the size of this asymmetric behavior depends on the parameter that governs the financial analyst's preferences over wealth. This is turn affects the bias in their forecasts. Recent developments in the forecasting literature allow for the estimation of asymmetry parameters after observing data on forecasts. Moreover, they allow for a more general test of rationality once asymmetries are present. We make use of forecast data from financial analysts, provided by I/B/E/S, and present evidence of asymmetries and weak evidence against rationality. In the second chapter we study the evolution over time in the revisions to financial analysts' earnings estimates for the 30 Dow Jones firms over a 20 year period. If analysts' forecasts used information efficiently, earnings revisions should not be predictable. However, we find strong evidence that earnings revisions can in fact be predicted by means of the sign of the last revision or by using publicly available information such as short interest rates and past revisions. We propose a three-state model that accounts for the very different magnitude and persistence of positive, negative and `no change' revisions and find that this model forecasts earnings revisions significantly better than an autoregressive model. We also find that our forecasts of earnings revisions predict the actual earnings figure beyond the information contained in analysts' earnings estimates. Finally, the empirical literature on financial analysts' forecast revisions of corporate earnings has focused on past stock returns as the key determinant. The effects of macroeconomic information on forecast revisions is widely discussed, yet rarely tested in the literature. In the third chapter, we use dynamic factor analysis for large data sets to summarize a large cross-section of macroeconomic variables. The estimated factors are used as predictors of the average analyst's forecast revisions for different sectors of the economy. Our analysis suggests that factors extracted from macroeconomic variables do, indeed, improve on the current model with only past stock returns. In trying to explain what drives financial analysts' forecast revisions, the factors representing the macroeconomic environment must be considered to avoid a potential omitted variable problem. Moreover, the explanatory power and direction of such factors strongly depend on the industry in question.


Do Errors in Expectations Explain the Cross-Section of Stock Returns

Do Errors in Expectations Explain the Cross-Section of Stock Returns
Author: G. Mujtaba Mian
Publisher:
Total Pages:
Release: 2005
Genre:
ISBN:

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Value stocks have historically outperformed growth stocks in most of the major international markets. Many researchers attribute this phenomenon to overly optimistic (pessimistic) expectations of investors for growth (value) stocks. In this paper, we use professional analysts' earnings forecasts from Japan to test this errors-in-expectations hypothesis. We compare the magnitude of the forecast errors, the proportion of optimistic and pessimistic forecasts, and the likelihood of downward forecast revisions, across growth and value stocks. In contrast to the predictions of the hypothesis, we do not find any evidence that earnings forecasts are systematically more optimistic for growth than for value stocks. Our results also suggest that the alleged correlation between book-to-market value, a common measure of growth, and forecast errors is the result of a measurement bias in computing the magnitude of the latter variable.


Refining Financial Analysts' Forecasts by Predicting Earnings Forecast Errors

Refining Financial Analysts' Forecasts by Predicting Earnings Forecast Errors
Author: Tatiana Fedyk
Publisher:
Total Pages: 30
Release: 2018
Genre:
ISBN:

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Prior research on financial analyst' quarterly earnings forecasts has documented serial correlation in forecast errors. This paper examines the way serial correlation in quarterly earnings forecast errors varies with firm and analyst attributes such as the firm's industry and the analyst's experience and brokerage house affiliation. Finding that serial correlation in forecast errors is significant and seemingly independent of firm and analyst attributes, I model consensus forecast errors as an autoregressive process. I demonstrate that the model of forecast errors that best fits the data is AR(1), and use the obtained autoregressive coefficients to predict consensus forecast errors. Modeling the consensus forecast errors as an autoregressive process, the present study predicts future consensus forecast errors, and proposes a series of refinements to the consensus. These refinements were not presented in prior literature, and can be useful to financial analysts and investors.