コード例 #1
0
        public bool insertRecommenderJob(DataResult avgs)
        {
            try
            {
                bool flag = false;
                NewElasticService.ServiceWCFClient ws = new NewElasticService.ServiceWCFClient();
                for (int n = 0; n < avgs.Number_top_jobs; n++)
                {
                    NewElasticService.RecommendedJobDto job = new NewElasticService.RecommendedJobDto();
                    job.RecruiteeId = new Guid(avgs.User_profile.UserID);
                    job.JobId = new Guid(avgs.TopJobNames[n]);
                    job.PredictedRankingValue = avgs.Mylist.ElementAt(n).PredRecJob;
                    flag = ws.insertRecommendedJob(job);

                }
                return true;
            }
            catch(Exception ex)
            {
                return false;
            }
        }
コード例 #2
0
 public void writeDifficultyToFile(StreamWriter writeText, DataResult avgs)
 {
     writeText.WriteLine(avgs.Avg_topJobDiff + "\t" + avgs.Avg_similarJobsDifficulty + "\t" + avgs.User_profile.UserRating + "\t" + avgs.Rating_total_avg);
 }
コード例 #3
0
        public bool MainRoutine()
        {
            try
            {
                //Load File System Service
                FileSystemManager fileMgr = new FileSystemManager();

                NewElasticService.ServiceWCFClient svc = new ServiceWCFClient();
                bool delete = svc.deleteAllRecommendedJob();

                JobManager jobMgr = new JobManager();
                String[] job_list = jobMgr.selectExpressionNames(); //job_names
                double[] X = jobMgr.selectExpressionDifficulty(); //X
                double[,] new_X = new double[X.Length, 1];
                for (int i = 0; i < X.Length; i++)
                {
                    new_X[i, 0] = X[i];
                }

                //User Profile (just the user ID, I still need the user self rating)
                RecruiteeManager recMgr = new RecruiteeManager();
                String[] recruitee_names = recMgr.selectRecruiteeNames();
                double[] recruitee_skill = recMgr.selectRecruiteeSkills();
                UserProfile[] users_profile = new UserProfile[recruitee_skill.Length];
                for (int i = 0; i < recruitee_skill.Length; i++)
                {
                    users_profile[i] = new UserProfile("", 0);
                    users_profile[i].UserID = recruitee_names[i];
                    users_profile[i].UserRating = recruitee_skill[i];
                }

                //new_Y
                ElasticManager elaMgr = new ElasticManager();
                double[,] Y = elaMgr.selectRatings(job_list, users_profile);

                /////// WRITING VARIABLES IN FILE ////////////
                new Thread(() =>
                {
                    Thread.CurrentThread.IsBackground = true;
                    ////used to insert recommended jobs for a user in the database
                    fileMgr.writeFiles(job_list, new_X, users_profile, Y);
                }).Start();

                //Object to Hold Task Parameters
                TaskDimensions task = new TaskDimensions();
                task.num_features = new_X.GetLength(1); //1 is the number of columns
                task.num_jobs_init = job_list.Length;
                task.num_users_init = recruitee_names.Length;

                //User number to start proccessing
                int user_number = 1;

                //Creating a variable to write in a File the job recommendations and comparisons
                //Load File Writer
                StreamWriter writeTextResult = fileMgr.getResultStreamWriter();
                StreamWriter writeTextAverages = fileMgr.getAverageStreamWriter();
                StreamWriter writeText = fileMgr.getIdandAvgStreamWriter();
                StreamWriter writeTextDiff = fileMgr.getDifficultyStreamWriter();

                double[] users_calculated_raitings = new double[task.num_users_init];

                double total_rating_avg_system = 0;
                double total_similarity_avg_system = 0;
                double total_inaccuracy_system = 0;

                MatlabManager matlabMgr = new MatlabManager();

                while (user_number <= task.num_users_init)
                {
                    double[,] my_ratings = new double[task.num_jobs_init, 1];
                    double[,] new_Y = new double[task.num_jobs_init, task.num_users_init - 1];
                    double[,] R = new double[task.num_jobs_init, task.num_users_init - 1];

                    for (int i = 0; i < job_list.Length; i++)
                    {
                        int k = 0;
                        for (int n = 0; n < users_profile.Length; n++)
                        {
                            if (n != (user_number - 1))
                            {
                                new_Y[i, k] = Y[i, n];
                                if (Y[i, n] != 0)
                                    R[i, k] = 1;
                                else
                                    R[i, k] = 0;
                                k++;
                            }
                            else
                                my_ratings[i, 0] = Y[i, n];
                        }
                    }

                    //Creating a MatLab reference to execute the recommended job script
                    object[] res = matlabMgr.executeFilter(task, job_list, Directory.GetCurrentDirectory() + DirectoryPaths.MATLAB, my_ratings, new_Y, R, new_X);

                    //Each time creates a  to be used to write the recommended jobs in a file
                    List<TopJobData> mylist = fileMgr.writeValuesToFile(writeTextResult, res, job_list, user_number, new_X);

                    //Calculate Averages for Jobs for a User
                    DataResult avgs = new DataResult(mylist, mylist.Count, users_profile[user_number - 1]);
                    avgs.AverageForEachJob();
                    fileMgr.writeAveragesToFile(avgs, writeTextAverages, users_profile[user_number - 1]);

                    total_rating_avg_system += avgs.Rating_total_avg;
                    total_similarity_avg_system += avgs.Percentage_total_avg;
                    total_inaccuracy_system += avgs.Self_inaccuracy;
                    //adding the list at the Dictionary for each user

                    //ID and AVGs file
                    writeText.WriteLine(users_profile[user_number - 1].UserID + "\t" + avgs.Rating_total_avg);

                    users_calculated_raitings[user_number - 1] = avgs.Rating_total_avg;

                    //writing in the difficulty file
                    fileMgr.writeDifficultyToFile(writeTextDiff, avgs);

                    //used to insert recommended jobs for a user in the database
                    new Thread(() =>
                    {
                        Thread.CurrentThread.IsBackground = true;
                        ////used to insert recommended jobs for a user in the database
                        bool result = elaMgr.insertRecommenderJob(avgs);
                    }).Start();

                    user_number++;
                }

                total_rating_avg_system /= task.num_users_init;
                total_similarity_avg_system /= task.num_users_init;
                total_inaccuracy_system /= task.num_users_init;
                //writing some more global information
                fileMgr.writeGlobalAveragesInformation(total_rating_avg_system, total_similarity_avg_system, total_inaccuracy_system,
                    task, writeTextAverages, users_profile, users_calculated_raitings);

                //closing the three files
                writeText.Close();
                writeTextResult.Close();
                writeTextAverages.Close();
                writeTextDiff.Close();

                new Thread(() =>
                {
                    Thread.CurrentThread.IsBackground = true;
                    ////used to insert recommended jobs for a user in the database
                    bool result = elaMgr.updateRanking(DirectoryPaths.FILE_ID_AVG);
                }).Start();

                Console.WriteLine("DONE");
                //Wait until fisnih
                Console.ReadLine();

                return true;
            }
            catch (Exception ex)
            {
                return false;
            }
        }
コード例 #4
0
 public bool writeDifficultyToFile(StreamWriter writeText, DataResult avgs)
 {
     try
     {
         IFileSystemSvc svc = (IFileSystemSvc)this.getService(typeof(IFileSystemSvc).Name);
         return svc.writeDifficultyToFile(writeText, avgs);
     }
     catch (ServiceLoadException ex)
     {
         return false;
     }
 }
コード例 #5
0
 //For each one of the users, writes averages analysis to a file
 public void writeAveragesToFile(DataResult result, StreamWriter writeText, UserProfile user)
 {
     writeText.WriteLine("USER: "******" with rating:\t" + user.UserRating);
     for (int k = 0; k < result.Number_top_jobs; k++)
     {
         if (result.TopJobNames[k] != null)
         {
             writeText.WriteLine("Job " + result.TopJobNames[k] + "\t" + result.TopJobDiff[k] + "\t" +
                 result.Mylist.ElementAt(k).PredRecJob + "\t" + result.Rating_average[k] + "\t" +
                 result.Percentage_average[k] + "\t" + result.SimilarJobsDifficulty[k]);
         }
     }
     writeText.WriteLine("RATING AVGS TOTAL\t" + result.Rating_total_avg);
     writeText.WriteLine("PERCENTAGE AVGS TOTAL\t" + result.Percentage_total_avg);
     writeText.WriteLine("JOB DIFFICULTY AVGS TOTAL\t" + result.Avg_topJobDiff);
     writeText.WriteLine("SIMILAR JOBS DIFFICULTY AVGS TOTAL\t" + result.Avg_similarJobsDifficulty);
     writeText.WriteLine("SELF INACCURACY\t"+ result.Self_inaccuracy.ToString("N2") + "\n");
 }
コード例 #6
0
 public bool writeAveragesToFile(DataResult result, StreamWriter writeText, UserProfile user)
 {
     try
     {
         IFileSystemSvc svc = (IFileSystemSvc)this.getService(typeof(IFileSystemSvc).Name);
         return svc.writeAveragesToFile(result, writeText, user);
     }
     catch (ServiceLoadException ex)
     {
         return false;
     }
 }
コード例 #7
0
        public bool MainRoutine()
        {
            try
            {

                //Object to Hold Task Parameters
                TaskDimensions task = new TaskDimensions();

                //User number to start proccessing
                int user_number = 1;

                //Load File System Service
                FileSystemManager fileMgr = new FileSystemManager();

                //Method call to get the number of jobs and users from the file Y
                fileMgr.detectSizeOfJobsColumns(task, Directory.GetCurrentDirectory() + DirectoryPaths.Y);

                //Method call to get the number of features from the file X, and allocating the X matrix
                double[,] X = fileMgr.getNumberOfFeaturesX(Directory.GetCurrentDirectory() + DirectoryPaths.X, task);
                fileMgr.readFeaturesX(X, Directory.GetCurrentDirectory() + DirectoryPaths.X, task);

                //Method call to get the jobs names
                String[] job_list = fileMgr.readJobNames(Directory.GetCurrentDirectory() + DirectoryPaths.EXPRESSIONS, task);

                //method that return the users profile
                UserProfile[] users_profile = fileMgr.readUserProfile(Directory.GetCurrentDirectory() + DirectoryPaths.USER_TABLE, task);

                //Creating a variable to write in a File the job recommendations and comparisons
                //Load File Writer
                StreamWriter writeTextResult = fileMgr.getResultStreamWriter();
                StreamWriter writeTextAverages = fileMgr.getAverageStreamWriter();
                StreamWriter writeText = fileMgr.getIdandAvgStreamWriter();
                StreamWriter writeTextDiff = fileMgr.getDifficultyStreamWriter();

                double[] users_calculated_raitings = new double[task.num_users_init];

                double total_rating_avg_system = 0;
                double total_similarity_avg_system = 0;
                double total_inaccuracy_system = 0;

                ElasticManager elaMgr = new ElasticManager();

                while (user_number <= task.num_users_init)
                {
                    // job rating file for a user
                    double[,] my_ratings = new double[task.num_jobs_init, 1];

                    //Now we read R and Y from theirs files (-1 because I will remove the chosen user from the matrixes)
                    double[,] Y = fileMgr.readTrainingY(Directory.GetCurrentDirectory() + DirectoryPaths.Y, task, my_ratings, user_number);
                    double[,] R = fileMgr.readTrainingR(Directory.GetCurrentDirectory() + DirectoryPaths.R, task, user_number);

                    //Creating a MatLab reference to execute the recommended job script
                    MatlabManager matlabMgr = new MatlabManager();
                    object[] res = matlabMgr.executeFilter(task, job_list, Directory.GetCurrentDirectory() + DirectoryPaths.MATLAB, my_ratings, Y, R, X);

                    //Each time creates a  to be used to write the recommended jobs in a file
                    List<TopJobData> mylist = fileMgr.writeValuesToFile(writeTextResult, res, job_list, user_number, X);

                    //Calculate Averages for Jobs for a User
                    DataResult avgs = new DataResult(mylist, mylist.Count, users_profile[user_number - 1]);
                    avgs.AverageForEachJob();
                    fileMgr.writeAveragesToFile(avgs, writeTextAverages, users_profile[user_number - 1]);

                    total_rating_avg_system += avgs.Rating_total_avg;
                    total_similarity_avg_system += avgs.Percentage_total_avg;
                    total_inaccuracy_system += avgs.Self_inaccuracy;
                    //adding the list at the Dictionary for each user

                    //ID and AVGs file
                    writeText.WriteLine(users_profile[user_number - 1].UserID + "\t" + avgs.Rating_total_avg);

                    users_calculated_raitings[user_number - 1] = avgs.Rating_total_avg;

                    //writing in the difficulty file
                    fileMgr.writeDifficultyToFile(writeTextDiff, avgs);

                    //used to inC:\Users\larissaf\Desktop\FinaleVersionCrowd\recommenderSystems\Driver.cssert recommended jobs for a user in the database

                    new Thread(() =>
                    {
                        Thread.CurrentThread.IsBackground = true;
                        ////used to insert recommended jobs for a user in the database
                        bool result = elaMgr.insertRecommenderJob(avgs);
                    }).Start();

                    user_number++;

                }

                total_rating_avg_system /= task.num_users_init;
                total_similarity_avg_system /= task.num_users_init;
                total_inaccuracy_system /= task.num_users_init;
                //writing some more global information
                fileMgr.writeGlobalAveragesInformation(total_rating_avg_system, total_similarity_avg_system, total_inaccuracy_system,
                     task, writeTextAverages, users_profile, users_calculated_raitings);

                //closing the three files
                writeText.Close();
                writeTextResult.Close();
                writeTextAverages.Close();
                writeTextDiff.Close();

                /*
                 * Used to insert rating for task performed by workers. (User interface need to be built)
                 *
                double[,] full_Y = svc.readFullY(Directory.GetCurrentDirectory() + "/files/Y.txt", task);
                elaMgr.insertRatings(job_list, users_profile, full_Y);
                */

                Console.WriteLine("DONE");
                //Wait until fisnih
                Console.ReadLine();

                return true;
            }
            catch (Exception ex)
            {
                return false;
            }
        }
コード例 #8
0
 //just write information in the difficult file
 public bool writeDifficultyToFile(StreamWriter writeText, DataResult avgs)
 {
     try
     {
         writeText.WriteLine(avgs.Avg_topJobDiff + "\t" + avgs.Avg_similarJobsDifficulty + "\t" + avgs.User_profile.UserRating + "\t" + avgs.Rating_total_avg);
         return true;
     }
     catch (Exception ex)
     {
         return false;
     }
 }
コード例 #9
0
 //For each one of the users, writes averages analysis to a file
 public void writeAveragesToFile(DataResult result, StreamWriter writeText, UserProfile user)
 {
     writeText.WriteLine("USER: "******" with rating: " + user.UserRating);
     for (int k = 0; k < result.Number_top_jobs; k++)
     {
         if (result.TopJobNames[k] != null)
         {
             writeText.WriteLine("Job " + result.TopJobNames[k] + "\t" + result.Mylist.ElementAt(k).PredRecJob + "\t" + result.Rating_average[k] + "\t" + result.Percentage_average[k]);
         }
     }
     writeText.WriteLine("AVGS TOTAL\t" + result.Rating_total_avg + "\t" + result.Percentage_total_avg);
     writeText.WriteLine("SELF INACCURACY\t"+ result.Self_inaccuracy.ToString("N2") + "\n");
 }
コード例 #10
0
 //For each one of the users, writes averages analysis to a file
 public void writeAveragesToFile(DataResult result, StreamWriter writeText, int i)
 {
     writeText.WriteLine("USER: "******"Job " + result.TopJobNames[k] + "\t" + result.List.ElementAt(k).PredRecJob + "\t" + result.Rating_average[k] + "\t" + result.Percentage_average[k]);
         }
     }
     writeText.WriteLine("AVGS TOTAL\t" + result.Rating_total_avg + "\t" + result.Percentage_total_avg + "\n");
 }