J. OF PUBLIC BUDGETING, ACCOUNTING & FINANCIAL MANAGEMENT, 10(3), 375-397 FALL 1998 FURTHER EVIDENCE ON THE DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY Laurence E. Johnson* ABSTRACT. This paper presents a study of the audit delay experienced by 289 U.S. local governments. The study extends prior research by considering explanatory variables thought to be correlates of audit quality and by comparing city and county delay. Models of audit delay and audit fees are estimated using two-stage least squares regression. The study finds that audit delay is positively associated with correlates of audit quality and that cities experience less delay than do counties. The results indicate that, while audit fees have no explanatory power concerning audit delay, delay exerts a positive influence on fees. INTRODUCTION The importance of timely financial reporting by local governments is unequivocally recognized in the professional literature. The Governmental Accounting Standards Board (GASB) states (1987) that for financial reports to be useful, "they must be issued soon enough after the reported events to affect decisions," affirming the importance of timeliness as previously asserted by the National Council on Governmental Accounting (1982). Governments face no pressure for the prompt release of the financial statements from equity shareholders as is the case for business entities (Bamber, Bamber and Schoderbeck, 1993). Nonetheless, government managers have incentive to issue the financial reports expeditiously. The prompt release of government financial reports is viewed as signaling a strong system of internal control (Canary, 1988) and managerial competence (Dwyer and Wilson, 1989). The Government Finance Officers Association (GFOA) provides concrete motivation for ____________________ * Laurence E. Johnson, Ph.D., is Associate Professor, Department of Accounting, Colorado State University. His teaching and research interests are in state and local government accounting and financial auditing. Copyright © 1998 by PrAcademics Press 376 JOHNSON promptness by requiring governments that apply for the Certificate of Achievement for Excellence in Finance Reporting to release their financial reports within six months (GFOA, 1994). However, the timeliness of financial reporting is materially impacted by the audit function because the financial statements cannot be issued until the audit is concluded. The period of time from fiscal year end to the date of the audit report is known as audit delay. As noted, managers normally prefer minimal audit delay. Moreover, completion of the audit by a target date established by the client is perceived as contributing to audit quality (Carcello, Hermanson and McGrath, 1992). Thus, auditors are presumed to complete their engagements as quickly as possible within the constraint imposed by their obligation to perform with due professional care. Since the audit function has a considerable influence on the timeliness of financial reporting, it is important to understand the influences that increase or mitigate local government audit delay. This paper reports a study of local government (city and county) audit delay that addresses certain factors not considered in previous research. The study investigates the relationship between audit delay and fees and thus employs two-stage least squares (TSLS) regression in addition to ordinary least squares (OLS) regression in the data analysis. The study contributes to an improved overall understanding of the causes of governmental audit delay and provides indirect evidence of a link between delay and audit quality. PRIOR RESEARCH Three municipal audit delay studies have been performed within the last ten years. Dwyer and Wilson (1989) investigated the fiscal 1982 delay of 142 cities. They found a negative association between delay and (1) receipt of a GFOA Certificate; (2) independent (rather than state-agency) auditors; (3) responsibility for printing the annual report resting with the auditor; and (4) state regulation of municipal financial reporting practices. A positive relationship was observed between delay and state regulation of local government accounting practices. Rubin (1992) investigated audit delay as part of a study of auditor selection (between independent public accountants and the State Auditor) by Ohio cities. Using fiscal 1986 data, Rubin reported that receipt of a GFOA Certificate and auditor type were each significant (in separate regressions) in explaining delay. More recently, Johnson (1996) found fiscal 1993 municipal audit delay to be negatively related to receipt of a GFOA Certificate and a DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 377 September 30 fiscal year end. Johnson observed a positive association between delay and divided auditor responsibility as indicated in the audit report. His study indicates that delay is a determinant of audit fees, but not vice versa. Contrary to expectations, Johnson found no association between delay and auditor size (Big Six versus nonBig Six), the number of component units comprising the governmental reporting entity, or auditor tenure. The remainder of this paper is organized as follows. The next section provides a brief description of the research method. Following are three sections describing the study's model of governmental audit delay, the study's audit fee model, and data collection and analysis. The paper concludes with a discussion of the study's implications and limitations. RESEARCH METHOD OVERVIEW Data were obtained primarily from a review of fiscal 1993 governmental financial reports and via questionnaire. Separate models of delay and fees were initially estimated using ordinary least squares regression (OLS). Next, a test for endogeneity between delay and fees was conducted. Based on this test, the delay and fee models were respecified to include fees and delay, respectively, and reestimated using two-stage least squares regression (TSLS). The delay model considers (1) variables identified in prior research, (2) potential correlates of audit quality, (3) type of government, and (4) fees. The fee model is based primarily on variables identified in previous research. The derivation of the delay model follows. A Model of Governmental Audit Delay Variables from Prior Research Dwyer and Wilson argued that receipt of a GFOA Certificate of Achievement for Excellence in Financial Reporting is an observable signal of managerial competence. They further contended that, if minimal delay is itself a signal of competence, there should be a negative relationship between audit delay and receipt of a GFOA Certificate. Their study found this to be the case. Treating receipt of a GFOA Certificate as a control variable in his model of Ohio city audit delay, Rubin (1992) reported a similar finding. Johnson observed the same relationship based on univariate tests. Accordingly, this study treats receipt of a GFOA Certificate as a control variable (GFOA). 378 JOHNSON Composition of the governmental reporting entity has implications for audit delay. Statement No. 3 of the National Council on Governmental Accounting (NCGA, 1981) required that governments be broadly defined for reporting purposes. Accordingly, government financial reports encompass the primary government and any legally-separate entities deemed to be "component units" of the overall reporting entity.(1) The broad definition of the reporting entity can lead to situations wherein the financial statements of the various components of the reporting entity are audited by more than one auditor. In these cases, the auditor's report sometimes indicates a division of responsibility between the principal (reporting) auditor and the other auditor(s), a condition that may contribute to delay. Based on Johnson's finding of a positive association between division of audit responsibility and audit delay, this study includes division of responsibility (DIVR) as a control variable. Dwyer and Wilson (1989) did not find municipal audit delay to differ between "busy season" year ends (defined as October 31 through March 31) and other fiscal year ends. The municipalities included in Rubin's (1992) model of audit delay had a uniform fiscal year end (December 31). In contrast, Johnson found audit delay to be minimal for governments with September 30 fiscal year ends. Accordingly, this study controls for the effect of September 30 year ends (SYE) on audit delay. Audit Quality There is some evidence that audit quality and audit delay are related in the governmental sector. Arguing for a positive correlation between delay and quality, Brown and Margavio (1994) found delay to be significant in explaining small-city audit fees. Deis and Hill (1995) observed a positive relationship between audit quality (directly measured) and delay in a study of Texas school district audits. Direct measures of individual city and county audit quality are not readily available.(2) However, the association between audit delay and quality for cities and counties can be investigated in terms of hypothesized correlates of audit quality. Two such correlates considered in this study are a "time and materials" or "variable" fee arrangement and state-agency influence on independent auditors of cities and counties. In the mid 1980s, the U.S. General Accounting Office (GAO) studied the quality of audits of federal programs conducted by independent audit DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 379 firms. Based on the GAO data, Copley and Doucet (1993) found a positive relationship between fixed fee arrangements and the incidence of substandard audits of federal programs. Their finding implies that, under a fixed fee arrangement, audit quality may suffer because the auditor has incentive to limit the amount of audit testwork to a level that will not impair profitability of the audit engagement. Auditor-imposed limits on testwork, in turn, may cause fixed-fee audits to be completed comparatively quickly. Conversely, a "time and materials" or "variable" basis for billing the client provides economic incentive for auditors to perform all audit procedures deemed necessary, likely contributing to delay. Thus, it is expected that audits for which the fees are based on time expended by the auditors (VAR) will entail more delay than audits for which fees are not based on time expended. In several states, the state audit agency oversees the audits of local governments performed by independent certified public accountants. Such oversight includes "desk reviews" of audit reports, reviews of workpapers, and/or a requirement that independent auditors follow a state-developed audit guide. Because state oversight of independent auditors reduces "opportunistic" auditor behavior (i.e., intentional minimization of audit testwork), audits conducted under state oversight can be expected to be of higher quality than those that are not. In turn, compliance with stateprescribed audit procedures may contribute to audit delay. Based on this reasoning, state auditor influence (SAI) on the performance of local government audits by independent auditors is expected to be associated with increased delay. Type of Local Government The extant governmental audit delay research is based on city data; whether delay differs between cities and counties has not been previously investigated. Though cities and counties are subject to the same financial accounting and reporting requirements, differences in their organizational characteristics imply differential delay. Cities generally are organized such that their various service functions are closely coordinated. In contrast, various county functions are often administered by separately elected and relatively independent officials (e.g., sheriff, treasurer, clerk of the court, tax assessor). Indeed, Quiko (1981) characterizes county governments as "fragmented" and "headless." Similarly, Steadman (1976) observes the following: "Generally, county administration may best be viewed as a collection of relatively independent agencies which are rarely coordinated in 380 JOHNSON their operations." The comparatively uncoordinated nature of county operations may generally lead to delays and difficulties in the performance of county audits. Jakubowski (1995) found counties to have higher occurrences of material weaknesses in internal control, compared with cities. Jakubowski's finding suggests that, relative to city audits, county audits require increased substantive testwork to reduce the risk of material misstatement in the financial statements to an acceptably low level. This finding further implies that a higher proportion of audit procedures are performed near or after the balance sheet date for counties than is the case for cities. Ashton, Willingham and Elliot (1987) and Craig (1992) have found audit delay to proxy for the proportion of audit testwork performed after fiscal year end. The preceding discussion implies that mean audit delay for cities (CITY) is less than that for counties. Audit Fees The final issue investigated in this study is whether audit fees influence delay. Canary (1988) argued that governments may accept increased audit delay in exchange for reduced fees, (the complement of the condition suggested by Dyer and McHugh (1975) wherein auditees "buy" reduced delay). Rubin (1992) made a case for either a positive and negative relationship between fees and delay. He suggested that promptly-completed audits might be more expensive because they involve concentrated audit resources (e.g., additional staff, overtime) or higher auditor opportunity cost or that audits involving more delay might be more costly because they reflect increased audit testwork. Rubin (1992) found fees per capita insignificant in explaining municipal audit delay and vice-versa. However, there is other evidence of positive covariance between public-sector audit delay and fees, and evidence that delay and fees are endogenous. As previously noted, Brown and Margavio found audit delay significant (positive coefficient) in explaining fees, using OLS. Using simultaneous regression, Deis and Hill (1995) found a positive relationship between audit fees and audit delay in a study of Texas school district audits. Delay was significant in explaining fees, and vice-versa. Also using simultaneous regression, Johnson (1996) found audit delay significant (positive coefficient) in explaining audit fees per capita; fees per capita were not significant in explaining delay, albeit the sign of the fee-per- DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 381 capita coefficient was positive. A fee-per-capita specification may not be optimal, though, because it assumes a linear relationship between population and fees. (3) Thus, the present study investigates whether total audit fees (AFEE, logarithmically transformed, LAFEE) help explain audit delay. Fees and population are highly correlated, but no prior governmental delay study has found population to be significant. Accordingly, interpretation of the estimated coefficient of LAFEE in the delay model should not be confounded by population. Based on prior research, the sign of LAFEE is expected to be positive. A Model of Governmental Audit Fees Because of possible joint endogeneity between delay and fees, determining whether fees influence delay also requires investigating whether delay influences fees. This necessitates estimating a governmental audit fee model. The model employed in this study incorporates four independent variables identified in prior studies and two new variables, all of which are expected to exhibit a positive relationship with fees. Based on Rubin (1988) and Copley (1989), respectively, the model controls for population (POP, logarithmically transformed, LPOP) and auditor size (B6). Following Johnson (1996), the fee model controls for a September 30 fiscal year end (SYE) and the number of component units comprising the governmental reporting entity (CU). The model also includes a delay-related variable, stateagency influences on the audit (SAI), and a variable related to audit complexity, the number of pension trust funds maintained by the government (PTF). DATA COLLECTION AND ANALYSIS The data include municipal observations and certain explanatory variables previously employed by Johnson (1996), additional observations representing counties, and additional independent variables for all observations. Comprehensive Annual Financial Reports (CAFRs) of 436 U.S. local governments (with populations of 20,000 or more) for fiscal 1993 on file at a U.S. university were reviewed to determine audit delay (in days), several independent variables, and the names and addresses of each city's chief financial officer. Questionnaires were sent to each government's finance officer requesting total fees for fiscal 1993. Follow-up questionnaires requested information concerning the basis on which the 1993 audit fee was computed. Two hundred eighty nine (289) usable responses (66 percent) 382 JOHNSON were received. A list of states in which the state auditor influences the scope and nature of local government audits performed by independent accountants was obtained from the National Association of State Auditors, Comptrollers and Treasurers (NASACT, 1996). Table 1 summarizes the variables measured in this study and the sources from which they were obtained. Table 2 presents descriptive statistics for the study's continuous and discrete variables. Table 3 presents descriptive statistics for audit delay sorted by dummy variable. The data represent all Big Six audit firms, numerous regional and local firms, and four state audit agencies. June 30, September 30, and December 31 fiscal year ends comprise about 55 percent, 17 percent, and 25 percent of the data, respectively. Table 4 presents Pearson correlation coefficients for the variables. Most correlations are much less than .30. The correlations greater than .30 are related largely to fees; two other fairly high correlations reflect (1) the relatively lower mean population of the cities vis-a-vis the counties in the sample and (2) the proclivity of state audit agencies to charge fees on a variable basis. DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 383 TABLE 1 Summary of Variables Variable Name Purpose of Source Variable -----------------------------------------------------------------------------------------Audit delaya LDELAY Audit feea LAFEE Endogenous Government successfully participates in GFOA Certificate of Achievement program GFOA Divided auditor responsibility DIVR September 30 fiscal year end SYE Fee based on per hour charges State auditor influences the independent audit Type of government (city or county) State-agency auditor a Questionnaire Exogenous--delay CAFR Exogenous--delay CAFR Exogenous--delay and fees VAR SAI CITY STA CAFRb Endogenous CAFR Exogenous--delay Questionnaire Exogenous--delay and fees NASACTc Exogenous--delay Exogenous--delay CAFR CAFR Population LPOP Exogenous--fees CAFR Auditor size (Big Six/ nonBig Six) B6 Exogenous--fees CAFR Number of component units CU Exogenous--fees CAFR Number of pension trust funds PTF Exogenous--fees CAFR (a) Logarithmically transformed for analysis. (b) Obtained from review of Comprehensive Annual Financial Report (CAFR). (c) Obtained from National Association of State Auditors, Comptrollers and Treasurers (NASACT) (1996). 384 JOHNSON TABLE 2 Descriptive Statistics: Continuous and Discrete Variables Total Cities Counties (n=289) (n=184) (n=105) -----------------------------------------------------------------------------------------Delay (in days)* Mean 121.30 114.43 133.33 Standard deviation 34.80 33.83 33.33 Range 53-253 53-253 55-224 Audit fee (in $1,000)* Mean 81.64 70.16 101.80 Standard deviation 74.86 71.38 Range 5.70-565 76.89 5.70- 8.65-565 428 Population (in 1,000)* Mean Standard deviation Range Component units Mean 256.25 349.84 20-2907 150.71 167.70 33-1036 3.09 2.84 Standard deviation 2.92 2.52 Range 0-21 0-16 441.21 484.96 20-2907 3.54 3.48 0-21 Pension trust funds Mean .79 .98 1.19 1.35 .45 Standard deviation .72 Range 0-8 0-8 0-5 * log transformed for analysis DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 385 TABLE 3 Delay in Days by Dummy Variable (N=289) Dummy=0 Condition indicated Dummy=1 by Dummy=1 Mean Std Dev. n % Mean Std Dev. n % -----------------------------------------------------------------------------------------------Government awarded GFOA Certificate* 118.77 32.59 256 88 140.88 44.62 33 12 Divided auditor responsibility* 137.48 33.34 65 19 116.60 33.87 224 81 September 30 fiscal year end* 101.96 Audit fee computed on "time and materials" basis* 151.31 State auditor influences the independent audit * Government is a city 33.09 37.23 49 17 125.25 16 5 33.87 240 83 119.54 33.91 273 95 33.92 223 77 127.58 37.23 66 23 119.44 114.43 33.83 184 63 133.33 33.32 105 37 * State audit agency 160.27 24.66 11 4 119.76 34.27 278 96 * means of dummy variable conditions are significantly different at á # .01 OLS Analysis--Delay and Fees The initial step in the analysis was to estimate the model of audit delay (not including fees) using OLS. However, one adjustment to the model was necessitated by the sample data. The sample includes 11 counties audited by state audit organizations. Prior research (Dwyer and Wilson, 1989; Rubin, 1992) shows that state auditors are associated with maximal delay, a finding replicated in this study (see Table 3). Further, as noted in the preceding paragraph, state auditors account for a disproportionately large number of the variable-fee engagements in the sample (six of the total of 16). To prevent the influence of state agency-performed county audits from confounding the coefficient estimates of VAR and CITY, the delay model included a dummy variable for state 386 JOHNSON DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 387 agency-performed audits (STA). Thus, the structural delay model was estimated as follows: LDELAY = â0 + â1 GFOA + â2 DIVR + â3 SYE + â4 VAR + â5SAI + â6CITY + â7STA + å (1) where: GFOA: DIVR: SYE: VAR: 1 for receipt of a GFOA certificate, otherwise 0; 1 for divided auditor reporting responsibility, otherwise 0; 1 indicating a September 30 fiscal year end, otherwise 0; 1 if the audit fee was computed on a time and materials basis, otherwise 0; SAI: 1 if a state agency prescribed the scope and nature of the audit, otherwise 0; CITY: 1 if the government is a city, 0 if the government is a county; STA: 1 if the auditor is a state audit agency, otherwise 0. The estimated regression model is presented at Table 5. White's test (Gujarati, 1995) indicates that heteroschedasticity is not affecting the standard errors and t-statistics for the coefficient estimates. Inspection of residuals and the Wilk-Shapiro test (test statistic = .996) suggest that the residuals are normally distributed. No variance inflation factor exceeds 1.3, indicating that collinearity is not a problem. Thus, the estimated model can be interpreted straightforwardly. Six coefficient estimates are significant at conventional levels and all coefficient signs are consistent with expectations. (4) The adjusted R2 of this model is .214. The structural audit fee model (excluding delay) was estimated using OLS as follows: LAFEE = â0 + â1LPOP + â2B6 + â3SYE + â4CU + â5SAI + â6PTF + å (2) The results of the fee regression estimate appear in Table 6. As with the delay model, White's test indicated no heteroschedasticity in the estimate. Other diagnostic procedures indicated no problems of collinearity or nonnormal residuals with the fee model. The adjusted R2 of the fee estimate, .495, is comparable with those reported by Rubin (1988) and Copley (1989). The above models of delay and fees provide the foundation for investigating whether fees affect delay and vice-versa. 388 JOHNSON TABLE 5 Ordinary Least Squares Estimate of Audit Delay Model* Expected Coefficient Standard Variables Sign Estimate Error t-statistic p-value ----------------------------------------------------------------------------------------------Constant ? 4.902 .054 90.020 .000 Government awarded GFOA Certificate (GFOA) ! !0.136 .049 !2.764 .006 Divided auditor reporting responsibility (DIVR) + .123 .038 3.228 .001 September 30 fiscal year end (SYE) ! !0.207 .043 !4.809 .000 Audit fee computed on Atime and materials" basis (VAR) + .075 1.776 .076 .105 .038 State auditor influences the independent audit (SAI) .133 + 2.719 Government is a city (CITY) ! !.085 .034 !2.504 .013 State auditor (STA) + 0.132 .090 1.456 .146 Model F ratio Prob (F ratio) Adjusted R2 .007 12.226 .000 .214 * Dependent variable= the natural logarithm of audit delay in days) Two-Stage Least Squares Estimation As indicated, an assumption of this study is joint endogeneity between delay and fees. If justified, this assumption requires that a simultaneous regression technique be employed to estimate a delay model that includes fees and a fee model that includes delay. The joint endogeneity assumption was tested using a version of the Hausman specification test appropriate for a two-equation system (Gujarati, 1995). The test involved regressing all exogenous variables (i.e., the reduced-form model) separately against each endogenous variable (using OLS) to DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 389 TABLE 6 Ordinary Least Squares Estimate of Audit Fee Model* Expected Coefficient Standard Variables Sign Estimate Error t-statistic p-value -----------------------------------------------------------------------------------------------Constant ? 8.569 .168 50.799 .000 ln of population (LPOP) + .403 .034 11.792 .000 Big Six auditor (B6) + .329 .063 5.192 + .181 .084 2.139 .033 Number of component units (CU) + .041 .011 3.725 .000 State auditor influences the independent audit (SAI) + .150 0.076 1.963 .050 No. of pension funds (PTF) + .072 0.026 2.794 .005 Sept. 30, fiscal year end (SYE) Model F ratio Prob (F ratio) Adjusted R2 .000 48.207 .000 .495 * Dependent variable is the natural logarithm of audit fees generate the residuals. The structural delay model (Equation 1) was then respecified to include the residuals from the reduced-form fee model. Likewise, the structural fee model (Equation 2) was respecified to include the reduced-form delay residuals. Under this test, if the coefficients of the residuals are significant in the respective regressions, the hypothesis of joint endogeneity should not be rejected. The Hausman procedure yields significant fee-model residuals in the delay regression (t = 3.35, p < .001). and delay-model residuals in the fee regression (t = 3.11, p = .002). These results indicate that delay and fees are jointly endogenous, so that simultaneous estimation of delay and fee models is necessary to avoid biased coefficient estimates. Accordingly, the initial delay model (Equation 1) was respecified to include the natural logarithm of fees (LAFEE) as an explanatory variable and reestimated using two-stage least squares (TSLS) regression. In like fashion, the log of delay (LDELAY) was added to the initial fee model (Equation 2), which was reestimated using TSLS. 390 JOHNSON The results of the TSLS estimations appear at Table 7 (for delay) and Table 8 (for fees). Diagnostic measures indicate that heteroschedasticity, collinearity, and nonnormally-distributed residuals are not distorting the estimated coefficients or t-statistics. The most salient feature of Table 7 is that the t-statistic for the fee variable (LAFEE), .870, is not significant, indicating that audit fees do TABLE 7 Two-Stage Least Squares Estimate of Audit Delay Model* Expected Coefficient Standard Variables Sign Estimate Error t-statistic p-value -----------------------------------------------------------------------------------------------Constant ? 4.575 .379 12.046 .000 Government awarded GFOA Certificate (GFOA) ! !0.140 .049 !2.855 .004 Divided auditor reporting responsibility (DIVR) + .111 .040 2.738 .006 Sept. 30 fiscal year end (SYE) Audit fee computed on Atime and materials" basis (VAR) ! + State auditor influences the independent audit (SAI) Government is a city (CITY) !0.210 .130 + ! !0.075 .042 !4.910 .074 .100 1.747 .038 .036 .081 2.596 !2.103 .000 .010 .036 State auditor (STA) + .139 .090 1.540 .124 Natural logarithm of audit fee (LAFEE) + .029 .034 .870 .385 Model F ratio 10.995 Prob (F ratio) .000 Adjusted R2 .229 * Dependent variable is the natural logarithm of audit delay in days. not have explanatory power with respect to audit delay. Otherwise, the OLS and TSLS estimates of the delay model are comparable. A review of Table 8 indicates that the audit fee model estimated using TSLS is comparable with DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 391 the OLS estimation (Table 6), except that SAI is not significant under TSLS. The TSLS estimate further shows that delay is significant in explaining the observed variation in fees. DISCUSSION The preceding analysis indicates that most of the expected influences on governmental audit delay are significant. Consistent with prior research, this study finds that successful participation in the Government Finance Officers Association "Certificate of Achievement for Excellence in Finance Reporting" program is associated with minimal delay. Also replicated are previous findings that September 30 fiscal year ends are negatively associated with delay whereas divided auditor responsibility and delay exhibit a positive association. From a policy standpoint, adopting a September fiscal year end to minimize delay is probably not a realistic option for many governments. On the other hand, the increased delay arising from divided audit responsibility argues, as a policy matter, in favor of governments retaining one auditor, whenever possible, to audit the financial statements of all component units with the reporting entity. Consistent with Johnson’s results (using fees per capita) but not so with the findings of the Deis and Hill study, this study’s results show that total audit fees do not explain audit delay. Consistent with both prior studies, the present research indicates that audit delay helps explain fees. This finding may indicate a relationship between audit quality (Brown and Margavio, 1994; Deis and Hill, 1995) and/or audit risk (Johnson, 1996). Identifying the underlying influence on local government audit delay and fees is a worthwhile avenue for future research. The effects of audit quality correlates on delay are consistent with expectations. As predicted, audits for which the fee was based on audit time expended (as opposed to being fixed in advance) are positively associated with delay. In light of Copley and Doucet's finding (1993) of a negative association between fixed fee audits and audit quality, this result implies a positive relationship between delay and audit quality. The small number of strictly variable-fee audits in the sample is in keeping with the trend toward fixed-fee engagements reported by Margheim and Kelley (1992). 392 JOHNSON TABLE 8 Two-Stage Least Squares Estimate of Audit Fee Model Expected Coefficient Standard Variables Sign Estimate Error t-statistic p-value -----------------------------------------------------------------------------------------------Constant ? 4.864 1.539 3.159 .002 ln of population (LPOP) + .358 .038 9.217 .000 Big Six auditor (B6) + .381 .066 5.713 .000 Sept. 30 fiscal year end (SYE) + .377 .117 3.225 .001 Number of component units (CU) + .038 .011 3.401 .000 State auditor influences the independent audit (SAI) + .042 .088 .485 .628 No. of pension funds (PTF) + .071 0.026 2.759 .006 Natural logarithm of audit delay (LDELAY) + .821 0.339 2.420 .016 Model F ratio 42.430 Prob (F ratio) .000 Adjusted R2 .499 * Dependent variable is the natural logarithm of audit fees. The other quality-correlated variable, state auditor influence (SAI) on the conduct of government audits, also exhibits a positive association with delay. This suggests that state-mandated audit procedures, presumably in place to enhance audit quality, require effort beyond that which independent auditors might otherwise expend, and so contribute to delay. Further, while SAI is significant in the OLS fee estimate, under TSLS, delay replaces SAI as a significant variable, indicating that delay captures the effect of state auditor influences on fees. These findings add support to the argument that audit delay serves as a proxy, to some extent, for audit quality. This study finds, as predicted, that counties generally take longer to audit than do cities. Although the counties in this study's sample are, on average, more populous than the cities, prior research indicates that this finding is not driven by population. Neither is the finding driven by auditor type (independent versus state-agency auditor), since this variable is accounted for in the regression models. Rather, it appears that the less-coordinated nature DETERMINANTS OF LOCAL GOVERNMENT AUDIT DELAY 393 of county operations and/or the counties' propensity to have weaker internal controls, contributes to delay. The results presented here should be evaluated in light of the study's limitations. The sample was not randomly drawn, so caution should be used in attempting to generalize the results reported here to the entire population of U.S. city and county governments. Moreover, although this study identifies new influences on governmental audit delay, the estimated model leaves much of the observed variability in delay unexplained. Accordingly, additional research is needed. One possible influence on delay not considered in this study is the Single Audit Act of 1984. For instance, does the number and/or magnitude of questioned costs detected in federal grant programs impede completion of the financial statement audit? Similarly, the number of material weaknesses in internal control reported by auditors as required by the Single Audit Act may affect delay. In particular, the tendency of counties to have a higher incidence of material weaknesses in internal control vis-a-vis cities (Jakubowski, 1995) may account for some of the difference in delay between counties and cities observed in this study. As noted, another interesting topic for future research is the apparent relationship between local government audit delay and audit quality. However, a direct test of this relationship must await the availability of a specific governmental audit quality metric. ACKNOWLEDGMENTS The author gratefully acknowledges the College of Business, Colorado State University for financial support for this research; Stephen Davies, William Mister, and Michael Moore, Colorado State University, for their helpful comments; Linda Vann, for research assistance; and Robert J. Freeman, for granting access to the Texas Tech University Governmental Accounting Research Library. NOTES 1. In brief, under NCGA Statement No. 3, a component unit relationship is assumed if a primary government and subordinate entity are financially interdependent (although other criteria could also establish such a relationship). GASB Statement No. 14, The Financial Reporting Entity, effective for fiscal years beginning after December 15, 1992 with early application permitted, has revised the reporting entity definition 394 JOHNSON criteria. (The new criteria are expected to result in governmental reporting entities being even more broadly defined than was the case under NCGA Statement 3.) A dummy variable controlling for governments that early-implemented GASB Statement No. 14 in 1993 was not significant to delay in preliminary data analysis and thus was dropped from further consideration. 2. For example, the governmental audit quality data collected by the Presidents Council on Integrity and Efficiency, analyzed by Brown and Raghunandan (1995), is not presented for individual governments. 3. The researcher is grateful to Paul Copley for pointing this out. 4. Preliminary analysis showed that, consistent with prior research, LPOP does not significantly explain delay. 5. Margheim and Kelley (1992) note that audit fee arrangements are not strictly dichotomous (variable or fixed). A third type of fee arrangement involves a fixed fee for specified services with the understanding that additional fees may be charged for extra audit time incurred in special circumstances (e.g., unforeseen difficulties, nonrecurring complexities arising from implementation of a new authoritative pronouncement). Accordingly, for this study, finance officers were asked to indicate whether their governments' audit fee arrangements were (1) fixed in total, (2) fixed, but with the understanding that additional billings would be made in special circumstances, or (3) variable. Approximately 25 percent of the respondents indicated that their governments' audit fees were fixed in total, 70 percent indicated an arrangement involving basic fixed fees with a provision for additional fees in special circumstances, and 5 percent indicated a strict variable arrangement. REFERENCES Ashton, R., Willingham, J., and Elliott, R. 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