This paper examines the effects of firms' financial and pension profiles on their funding strafegiss and actuarial choices. The paper uses reports filed by individual pension plans -.s'ith the Department of Labor under the requirements of the Employee Retirement Income Securiry Act of 1974 for the analysis. Evidence reported in the paper shows that as firms become overfunded, they make conservative actuarial choices to avoid visibility costs, and that as firms become underfunded, they make liberal actuarial choices to avoid visibility costs. As Vat annual contributions increase relative to the jiermissible contribution ranges, finns iiSEiks conservative actuarial choices to minimize penalties and maximize tax benefits. A?, the pjinua! conlTibutions decrease relative to the permissible contribution ranges, firms make Ijberai actuarial choices to minimize penalties and maximize tax benefits. The larger the profitability, cash flow from operations, and tax liability, and the smaller the debt of ;; finri, the higher the likelihood that the firm's managers will make conservative actuarial choices ic maximize coiUributions. Conversely, the smaller the profitability, cash flow r L oin opersitions, and tax liability, aid the larger the debt of a firm, the higher the likelihood that the firm's managers will make liberal actuarial choices to minimize contributions. This evidence, which is consistent with the hypothesis of funding management, can aid the Intemal Revenue Sei"vice (IRS) in regulating the defined-benefit pension plans more effeciively and help plan beneficiaries to manage their retirement portfolios more efficiently. The debiasing method developed in the paper can provide investors and creditors with the tools to identify the discretionary components of pension liabilities and thereby value firms more efficiently.
In this paper we examine the effect of filing form 10-K on EDGAR on the incidence of small and large trades. We find that the change to EDGAR filings results in significant increases in the volume of small, but not large trades, during the five-day window (−1, 3) around the filing date. While our data does not allow us to directly examine the trading profits and transactions costs of investors, we are able to examine whether the trading patterns reflect information available in the 10-K differently in the pre- and post-EDGAR period. Using stock return as a proxy for the information content of the 10-K, our results show that post-EDGAR small trades are more likely to reflect that information, i.e., more likely than in the pre-EDGAR period to be buys (sells) when returns in the five-day window after the trade are positive (negative). We also find that while the product of the net buys (sells) and the price change over the five-day window after the trade for small trades in the post-EDGAR period is still less than that for large trades, the difference between the two groups decreased significantly. Consequently, while we cannot directly examine the profitability of these transactions, the evidence presented is consistent with EDGAR improving the trading outcomes of small vis-a`-vis large investors.
If you would like to write for this, or any other Emerald publication, then please use our Emerald for Authors service information about how to choose which publication to write for and submission guidelines are available for all. Please visit www.emeraldinsight.com/authors for more information. About Emerald www.emeraldinsight.comEmerald is a global publisher linking research and practice to the benefit of society. The company manages a portfolio of more than 290 journals and over 2,350 books and book series volumes, as well as providing an extensive range of online products and additional customer resources and services.Emerald is both COUNTER 4 and TRANSFER compliant. The organization is a partner of the Committee on Publication Ethics (COPE) and also works with Portico and the LOCKSS initiative for digital archive preservation. AbstractPurpose -This paper aims to address three questions: Does the abnormal delay in the audit process signal poor earnings quality? Is this information about earnings quality incremental to that contained in earnings report delay? Does the market use this information about earnings quality in valuing the firm? Design/methodology/approach -Data are obtained from four databases: Compustat, Audit Analytics, Compact-Disclosure and I/B/E/S. Complete data are available for 5,298 firms for 22,492 firm-years. The paper uses a two-stage model. In the first stage, a detailed model using determinants from extant research tries to explain the audit delay. In the second stage, the unexplained delay from the first stage is used in the association tests with earnings quality. Findings -The paper presents evidence that abnormal delays in the audit process are inversely associated with earnings quality. When the market values a dollar of reported earnings, it appears to discount the valuation by the extent of abnormal audit delay. Originality/value -The current paper contributes to existing research in several ways. First, it establishes a comprehensive model to explain audit delays and provides a tool to measure abnormal audit delays. Second, it provides evidence of inverse association between abnormal audit delay and seven proxies of earnings quality. Finally, the paper shows that abnormal audit delay creates skepticism among investors about earnings quality and they value the disclosed earnings after discounting for such delay.
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