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Let's practice time-series forecasting of new home sales. Click here (https://www.census.gov/construction/nrs/historical_data/index.html) to see the newest data in the first table: Houses Sold (Excel file is

Let's practice time-series forecasting of new home sales. Click here (https://www.census.gov/construction/nrs/historical_data/index.html) to see the newest data in the first table: Houses Sold (Excel file is sold_cust.xls). Look at the monthly data on the "Reg Sold" tab. If you have trouble with the link, I have recreated the data in moodle in the Excel file "A3Q3 Census Housing Data."

Only keep the dates beginning in January 2007, so delete the earlier observations, and use the data through July 2022. Keep only the US data, both the seasonally unadjusted monthly (column B) and the seasonally adjusted annual (column G). Make a new column of seasonally adjusted monthly by dividing the annual data by 12. Make a column called "t" where t will go from 1 (Jan. 2007) to 187 (July 2022); make a t2 column too (since, if you look at the data, you can see sales are U-shaped; hence the quadratic). Also make a column "D" that is a dummy variable equal to one during the spring and summer months of March through August.

Determine the correlation between the unadjusted and the adjusted monthly data (=CORREL(unadjust., adjust.) in Excel), and produce scatterplots (with straight lines) of both. Do you think making a seasonal adjustment will be useful, given what you observe at this point?

Run four regressions: 1) seasonally unadjusted monthly as the dependent, and t and t2 as the independents, 2) seasonally unadjusted monthly as the dependent, and t, t2, and D as the independents, 3) seasonally adjusted monthly as the dependent, and t and t2 as the independents, and 4) seasonally adjusted monthly as the dependent, and t, t2, and D as the independents. Discuss your findings, and determine which of the four models is the best for forecasting new home sales. When interpreting your p-values, remember that, say, 1.0E-08 is 1.0 * 10^-8, which is 0.00000001. State the equation that would be used to forecast sales.

date US NSA month US SA year
Jan-07 66 891
Feb-07 68 828
Mar-07 80 833
Apr-07 83 887
May-07 79 842
Jun-07 73 793
Jul-07 68 778
Aug-07 60 699
Sep-07 53 686
Oct-07 57 727
Nov-07 45 641
Dec-07 44 619
Jan-08 44 627
Feb-08 48 593
Mar-08 49 535
Apr-08 49 536
May-08 49 504
Jun-08 45 487
Jul-08 43 477
Aug-08 38 435
Sep-08 35 433
Oct-08 32 393
Nov-08 27 389
Dec-08 26 377
Jan-09 24 336
Feb-09 29 372
Mar-09 31 339
Apr-09 32 337
May-09 34 376
Jun-09 37 393
Jul-09 38 411
Aug-09 36 418
Sep-09 30 386
Oct-09 33 396
Nov-09 26 375
Dec-09 24 352
Jan-10 24 345
Feb-10 27 336
Mar-10 36 381
Apr-10 41 422
May-10 26 280
Jun-10 28 305
Jul-10 26 283
Aug-10 23 282
Sep-10 25 317
Oct-10 23 291
Nov-10 20 287
Dec-10 23 326
Jan-11 21 307
Feb-11 22 270
Mar-11 28 300
Apr-11 30 310
May-11 28 305
Jun-11 28 301
Jul-11 27 296
Aug-11 25 299
Sep-11 24 304
Oct-11 25 316
Nov-11 23 328
Dec-11 24 341
Jan-12 23 335
Feb-12 30 366
Mar-12 34 354
Apr-12 34 354
May-12 35 370
Jun-12 34 360
Jul-12 33 369
Aug-12 31 375
Sep-12 30 385
Oct-12 29 358
Nov-12 28 392
Dec-12 28 399
Jan-13 32 446
Feb-13 36 447
Mar-13 41 444
Apr-13 43 441
May-13 40 428
Jun-13 43 470
Jul-13 33 375
Aug-13 31 381
Sep-13 31 403
Oct-13 36 444
Nov-13 32 446
Dec-13 31 433
Jan-14 33 443
Feb-14 35 420
Mar-14 39 405
Apr-14 39 403
May-14 43 451
Jun-14 38 418
Jul-14 35 402
Aug-14 36 456
Sep-14 37 470
Oct-14 38 476
Nov-14 31 442
Dec-14 35 497
Jan-15 39 515
Feb-15 45 540
Mar-15 46 480
Apr-15 48 502
May-15 47 502
Jun-15 44 480
Jul-15 43 506
Aug-15 41 518
Sep-15 35 456
Oct-15 39 482
Nov-15 36 504
Dec-15 38 546
Jan-16 39 505
Feb-16 45 517
Mar-16 50 532
Apr-16 55 576
May-16 53 571
Jun-16 50 557
Jul-16 54 628
Aug-16 46 575
Sep-16 44 558
Oct-16 46 575
Nov-16 40 571
Dec-16 39 561
Jan-17 45 573
Feb-17 51 587
Mar-17 61 632
Apr-17 56 598
May-17 57 635
Jun-17 56 619
Jul-17 48 572
Aug-17 45 556
Sep-17 50 637
Oct-17 49 626
Nov-17 50 711
Dec-17 45 630
Jan-18 48 610
Feb-18 54 618
Mar-18 66 670
Apr-18 61 655
May-18 62 674
Jun-18 56 631
Jul-18 52 611
Aug-18 47 592
Sep-18 46 589
Oct-18 43 567
Nov-18 44 600
Dec-18 38 550
Jan-19 49 599
Feb-19 57 638
Mar-19 68 702
Apr-19 64 698
May-19 56 620
Jun-19 66 753
Jul-19 55 674
Aug-19 57 699
Sep-19 56 719
Oct-19 55 714
Nov-19 50 694
Dec-19 49 688
Jan-20 59 708
Feb-20 63 690
Mar-20 59 610
Apr-20 52 582
May-20 64 706
Jun-20 79 922
Jul-20 85 1007
Aug-20 81 1036
Sep-20 77 991
Oct-20 78 1001
Nov-20 61 851
Dec-20 63 871
Jan-21 77 911
Feb-21 70 768
Mar-21 83 881
Apr-21 74 809
May-21 65 740
Jun-21 61 714
Jul-21 62 726
Aug-21 55 686
Sep-21 58 732
Oct-21 51 671
Nov-21 54 756
Dec-21 61 839
Jan-22 70 831
Feb-22 71 790
Mar-22 68 707
Apr-22 56 619
May-22 58 630
Jun-22 50 585
Jul-22 42 511

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