terminalFormulaNodes() public méthode

public terminalFormulaNodes ( bool all_outputs ) : AST.Address[]
all_outputs bool
Résultat AST.Address[]
Exemple #1
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        // Propagate weights
        private static void PropagateWeights(DAG dag)
        {
            if (dag.containsLoop())
            {
                throw new ContainsLoopException();
            }

            // starting set of functions; roots in the forest
            var formulas = dag.terminalFormulaNodes(false);

            // for each forest
            foreach (AST.Address f in formulas)
            {
                dag.setWeight(f, PropagateNodeWeight(f, dag));
            }
        }
Exemple #2
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        public static PrepData PrepSimulation(Excel.Application app, Excel.Workbook wbh, ProgBar pb, bool ignore_parse_errors)
        {
            // build graph
            var dag = new DAG(wbh, app, ignore_parse_errors);
            if (dag.containsLoop())
            {
                throw new DataDebugMethods.ContainsLoopException();
            }
            pb.IncrementProgress();

            // get terminal input and terminal formula nodes once
            var terminal_input_nodes = dag.terminalInputVectors();
            var terminal_formula_nodes = dag.terminalFormulaNodes(true);  ///the boolean indicates whether to use all outputs or not

            if (terminal_input_nodes.Length == 0)
            {
                throw new NoRangeInputs();
            }

            if (terminal_formula_nodes.Length == 0)
            {
                throw new NoFormulas();
            }

            // save original spreadsheet state
            CellDict original_inputs = UserSimulation.Utility.SaveInputs(dag);

            // force a recalculation before saving outputs, otherwise we may
            // erroneously conclude that the procedure did the wrong thing
            // based solely on Excel floating-point oddities
            UserSimulation.Utility.InjectValues(app, wbh, original_inputs);

            // save function outputs
            CellDict correct_outputs = UserSimulation.Utility.SaveOutputs(terminal_formula_nodes, dag);

            return new PrepData()
            {
                dag = dag,
                original_inputs = original_inputs,
                correct_outputs = correct_outputs,
                terminal_input_nodes = terminal_input_nodes,
                terminal_formula_nodes = terminal_formula_nodes
            };
        }
Exemple #3
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        // num_bootstraps: the number of bootstrap samples to get
        // inputs: a list of inputs; each TreeNode represents an entire input range
        // outputs: a list of outputs; each TreeNode represents a function
        public static TreeScore DataDebug(int num_bootstraps,
            DAG dag,
            Excel.Application app,
            bool weighted,
            bool all_outputs,
            long max_duration_in_ms,
            Stopwatch sw,
            double significance,
            ProgBar pb)
        {
            // this modifies the weights of each node
            PropagateWeights(dag);

            // filter out non-terminal functions
            var output_fns = dag.terminalFormulaNodes(all_outputs);
            // filter out non-terminal inputs
            var input_rngs = dag.terminalInputVectors();

            // first idx: the index of the TreeNode in the "inputs" array
            // second idx: the ith bootstrap
            var resamples = new InputSample[input_rngs.Length][];

            // RNG for sampling
            var rng = new Random();

            // we save initial inputs and outputs here
            var initial_inputs = StoreInputs(input_rngs, dag);
            var initial_outputs = StoreOutputs(output_fns, dag);

            // Set progress bar max
            pb.setMax(input_rngs.Length * 2);

            #region RESAMPLE

            // populate bootstrap array
            // for each input range (a TreeNode)
            for (int i = 0; i < input_rngs.Length; i++)
            {
                // this TreeNode
                var t = input_rngs[i];

                // resample
                resamples[i] = Resample(num_bootstraps, initial_inputs[t], rng);

                // update progress bar
                pb.IncrementProgress();
            }

            #endregion RESAMPLE

            #region INFERENCE
            return Inference(
                num_bootstraps,
                resamples,
                initial_inputs,
                initial_outputs,
                input_rngs,
                output_fns,
                dag,
                weighted,
                significance,
                pb);
            #endregion INFERENCE
        }
Exemple #4
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        // Propagate weights
        private static void PropagateWeights(DAG dag)
        {
            if (dag.containsLoop())
            {
                throw new ContainsLoopException();
            }

            // starting set of functions; roots in the forest
            var formulas = dag.terminalFormulaNodes(false);

            // for each forest
            foreach (AST.Address f in formulas)
            {
                dag.setWeight(f, PropagateNodeWeight(f, dag));
            }
        }
Exemple #5
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        // num_bootstraps: the number of bootstrap samples to get
        // inputs: a list of inputs; each TreeNode represents an entire input range
        // outputs: a list of outputs; each TreeNode represents a function
        public static TreeScore DataDebug(int num_bootstraps,
                                          DAG dag,
                                          Excel.Application app,
                                          bool weighted,
                                          bool all_outputs,
                                          long max_duration_in_ms,
                                          Stopwatch sw,
                                          double significance,
                                          ProgBar pb)
        {
            // this modifies the weights of each node
            PropagateWeights(dag);

            // filter out non-terminal functions
            var output_fns = dag.terminalFormulaNodes(all_outputs);
            // filter out non-terminal inputs
            var input_rngs = dag.terminalInputVectors();

            // first idx: the index of the TreeNode in the "inputs" array
            // second idx: the ith bootstrap
            var resamples = new InputSample[input_rngs.Length][];

            // RNG for sampling
            var rng = new Random();

            // we save initial inputs and outputs here
            var initial_inputs  = StoreInputs(input_rngs, dag);
            var initial_outputs = StoreOutputs(output_fns, dag);

            // Set progress bar max
            pb.setMax(input_rngs.Length * 2);

            #region RESAMPLE

            // populate bootstrap array
            // for each input range (a TreeNode)
            for (int i = 0; i < input_rngs.Length; i++)
            {
                // this TreeNode
                var t = input_rngs[i];

                // resample
                resamples[i] = Resample(num_bootstraps, initial_inputs[t], rng);

                // update progress bar
                pb.IncrementProgress();
            }

            #endregion RESAMPLE

            #region INFERENCE
            return(Inference(
                       num_bootstraps,
                       resamples,
                       initial_inputs,
                       initial_outputs,
                       input_rngs,
                       output_fns,
                       dag,
                       weighted,
                       significance,
                       pb));

            #endregion INFERENCE
        }
Exemple #6
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        // remove errors until none remain
        private UserResults SimulateUser(int nboots,
            double significance,
            CutoffKind ck,
            DAG dag,
            CellDict original_inputs,
            CellDict errord,
            CellDict correct_outputs,
            Excel.Workbook wb,
            Excel.Application app,
            AnalysisType analysis_type,
            bool weighted,
            bool all_outputs,
            long max_duration_in_ms,
            Stopwatch sw,
            String logfile,
            ProgBar pb
            )
        {
            // init user results data structure
            var o = new UserResults();
            HashSet<AST.Address> known_good = new HashSet<AST.Address>();

            // initialize procedure
            var errors_remain = true;
            var max_errors = new ErrorDict();
            var incorrect_outputs = Utility.SaveOutputs(dag.terminalFormulaNodes(all_outputs), dag);
            var errors_found = 0;
            var number_of_true_errors = errord.Count;
            Utility.UpdatePerFunctionMaxError(correct_outputs, incorrect_outputs, max_errors);

            // the corrected state of the spreadsheet
            CellDict partially_corrected_outputs = correct_outputs.ToDictionary(p => p.Key, p => p.Value);

            // remove errors loop
            var cells_inspected = 0;
            List<KeyValuePair<AST.Address, int>> filtered_high_scores = null;
            bool correction_made = true;
            while (errors_remain)
            {
                Console.Write(".");

                AST.Address flagged_cell = null;

                // choose the appropriate test
                if (analysis_type == AnalysisType.CheckCell5 ||
                    analysis_type == AnalysisType.CheckCell10
                    )

                {
                    flagged_cell = SimulationStep.CheckCell_Step(o,
                                                  significance,
                                                  ck,
                                                  nboots,
                                                  dag,
                                                  app,
                                                  weighted,
                                                  all_outputs,
                                                  correction_made,
                                                  known_good,
                                                  ref filtered_high_scores,
                                                  max_duration_in_ms,
                                                  sw,
                                                  pb);
                } else if (analysis_type == AnalysisType.NormalPerRange)
                {
                    flagged_cell = SimulationStep.NormalPerRange_Step(dag, wb, known_good, max_duration_in_ms, sw);
                }
                else if (analysis_type == AnalysisType.NormalAllInputs)
                {
                    flagged_cell = SimulationStep.NormalAllOutputs_Step(dag, app, wb, known_good, max_duration_in_ms, sw);
                }

                // stop if the test no longer returns anything or if
                // the test is simply done inspecting based on a fixed threshold
                if (flagged_cell == null || (ck.isCountBased && ck.Threshold == cells_inspected))
                {
                    errors_remain = false;
                }
                else    // a cell was flagged
                {
                    //cells_inspected should only be incremented when a cell is actually flagged. If nothing is flagged,
                    //then nothing is inspected, so cells_inspected doesn't increase.
                    cells_inspected += 1;

                    // check to see if the flagged value is actually an error
                    if (errord.ContainsKey(flagged_cell))
                    {
                        correction_made = true;
                        errors_found += 1;
                        // P(k) * rel(k)
                        o.PrecRel_at_k.Add(errors_found / (double)cells_inspected);
                        o.true_positives.Add(flagged_cell);

                        // correct flagged cell
                        flagged_cell.GetCOMObject(app).Value2 = original_inputs[flagged_cell];

                        Utility.UpdatePerFunctionMaxError(correct_outputs, partially_corrected_outputs, max_errors);

                        // compute total error after applying this correction
                        var current_total_error = Utility.CalculateTotalError(correct_outputs, partially_corrected_outputs);
                        o.current_total_error.Add(current_total_error);

                        // save outputs
                        partially_corrected_outputs = Utility.SaveOutputs(dag.terminalFormulaNodes(all_outputs), dag);
                    }
                    else
                    {
                        correction_made = false;
                        // numerator is 0 here because rel(k) = 0 when no error was found
                        o.PrecRel_at_k.Add(0.0);
                        o.false_positives.Add(flagged_cell);
                    }

                    // mark it as known good -- at this point the cell has been
                    //      'inspected' regardless of whether it was an error
                    //      It was either corrected or marked as OK
                    known_good.Add(flagged_cell);

                    // compute output error magnitudes
                    var output_error_magnitude = Utility.MeanErrorMagnitude(partially_corrected_outputs, correct_outputs);
                    // compute input error magnitude
                    double num_input_error_magnitude;
                    double str_input_error_magnitude;
                    if (errord.ContainsKey(flagged_cell))
                    {
                        if (Utility.BothNumbers(errord[flagged_cell], original_inputs[flagged_cell]))
                        {
                            num_input_error_magnitude = Utility.NumericalMagnitudeChange(Double.Parse(errord[flagged_cell]), Double.Parse(original_inputs[flagged_cell]));
                            str_input_error_magnitude = 0;
                        }
                        else
                        {
                            num_input_error_magnitude = 0;
                            str_input_error_magnitude = Utility.StringMagnitudeChange(errord[flagged_cell], original_inputs[flagged_cell]);
                        }
                    }
                    else
                    {
                        num_input_error_magnitude = 0;
                        str_input_error_magnitude = 0;
                    }

                    // write error log
                    var logentry = new LogEntry(analysis_type,
                                                wb.Name,
                                                flagged_cell,
                                                original_inputs[flagged_cell],
                                                errord.ContainsKey(flagged_cell) ? errord[flagged_cell] : original_inputs[flagged_cell],
                                                output_error_magnitude,
                                                num_input_error_magnitude,
                                                str_input_error_magnitude,
                                                true,
                                                correction_made,
                                                significance,
                                                ck.Threshold);
                    logentry.WriteLog(logfile);
                    _error_log.Add(logentry);
                }
            }

            // find all of the false negatives
            o.false_negatives = Utility.GetFalseNegatives(o.true_positives, o.false_positives, errord);
            o.max_errors = max_errors;

            var last_out_err_mag = Utility.MeanErrorMagnitude(partially_corrected_outputs, correct_outputs);

            // write out all false negative information
            foreach (AST.Address fn in o.false_negatives)
            {
                double num_input_error_magnitude;
                double str_input_error_magnitude;
                if (Utility.BothNumbers(errord[fn], original_inputs[fn]))
                {
                    num_input_error_magnitude = Utility.NumericalMagnitudeChange(Double.Parse(errord[fn]), Double.Parse(original_inputs[fn]));
                    str_input_error_magnitude = 0;
                }
                else
                {
                    num_input_error_magnitude = 0;
                    str_input_error_magnitude = Utility.StringMagnitudeChange(errord[fn], original_inputs[fn]);
                }

                // write error log
                _error_log.Add(new LogEntry(analysis_type,
                                            wb.Name,
                                            fn,
                                            original_inputs[fn],
                                            errord[fn],
                                            last_out_err_mag,
                                            num_input_error_magnitude,
                                            str_input_error_magnitude,
                                            false,
                                            true,
                                            significance,
                                            ck.Threshold));
            }
            return o;
        }