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Historical Stock Data
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Historical Stock Data Mathematical Model
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Expected return of stock i on given day
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Intercept of trend line, based on historical data
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Correlation of stock to overall market activity
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Return on the overall market on a given day (observable)
𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
Variable to account for statistical error
• 3 different presidential administrations
• 3 different policies
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Stock AMAT
A[r] 6%
T-Test 2.803699
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Stock AMAT IDTI EXAR CY LLTC SIGM PLAB MXIM CRUS XLNX KOPN MRVC CREE
A[r] 1% -2% -5% 1% -1% 2% -1% -9% -4% 1% -4% 28% 3%
T-Test 0.295514 -0.47049 -1.35958 0.278072 -0.40118 0.367313 -0.36911 -2.69025 -0.9872 0.268074 -0.99069 5.312803 0.482514
Stock MCHP DSPG TSEM LPTH AMCC EMKR OSIS POWI RMBS TSM AMKR AXTI
A[r] -6% -2% 0% 6% 1% 3% 27% -18% -5% 4% 8% -2%
T-Test -1.51896 -0.54477 -0.05397 1.025257 0.244519 0.532966 5.635623 -3.62756 -0.88472 0.965263 1.352127 -0.37095
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Stock AMAT IDTI EXAR CY LLTC SIGM PLAB MXIM CRUS XLNX KOPN MRVC CREE MCHP DSPG TSEM LPTH
A[r] 0% -1% 1% -1% -2% 4% -2% -1% -1% -1% 14% -1% 2% -1% -1% -3% -3%
T-Test 0.032692 -0.17314 0.349254 -0.25887 -0.73778 0.747464 -0.45893 -0.35556 -0.20679 -0.41173 3.136766 -0.27273 0.367635 -0.27162 -0.3785 -0.68594 -0.45095
Stock EMKR OSIS POWI RMBS TSM AMKR AXTI FCS FNSR NVDA QUIK CCMP ISIL MRVL PXLW SLAB AMCC
A[r] -2% -1% -1% -1% 0% -3% 0% 0% 0% -2% 2% 0% -1% 1% 0% -1% -1%
T-Test -0.32711 -0.18123 -0.29511 -0.13997 -0.07602 -0.72255 0.075322 -0.05436 0.014093 -0.43321 0.31087 0.035145 -0.41465 0.306934 -0.00676 -0.41236 -0.31895
Date Stock T-Test
2/2/2009 6701 2.129433
1/22/2009 6758 2.596411
2/2/2009 6723 4.116129
1/22/2009 7735 2.661969
2/5/2009 6981 3.463484
1/30/2009 6981 2.107546
1/27/2009 6981 2.08564
2/10/2009 6963 2.309086
2/5/2009 6963 3.698643
1/30/2009 6963 2.090748
2/6/2009 6501 2.068623
2/2/2009 6501 9.40179
1/30/2009 6501 2.123685
2/6/2009 6502 2.829403
2/2/2009 6502 4.612963
1/30/2009 6502 7.40011
1/26/2009 6502 1.948835
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Assessing Industrial Policy Using Financial Markets

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Assessing Industrial Policy Using Financial Markets

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  • 22. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Historical Stock Data Mathematical Model
  • 23. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖
  • 24. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Expected return of stock i on given day
  • 25. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Intercept of trend line, based on historical data
  • 26. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Correlation of stock to overall market activity
  • 27.
  • 28.
  • 29.
  • 30. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Return on the overall market on a given day (observable)
  • 31.
  • 32.
  • 33. 𝐸 𝑟𝑖 = 𝛼𝑖𝑀 + βiM ∗ rM + ε𝑖 Variable to account for statistical error
  • 34.
  • 35.
  • 36.
  • 37.
  • 38.
  • 39.
  • 40. • 3 different presidential administrations • 3 different policies
  • 41.
  • 43.
  • 44. • Stock AMAT IDTI EXAR CY LLTC SIGM PLAB MXIM CRUS XLNX KOPN MRVC CREE A[r] 1% -2% -5% 1% -1% 2% -1% -9% -4% 1% -4% 28% 3% T-Test 0.295514 -0.47049 -1.35958 0.278072 -0.40118 0.367313 -0.36911 -2.69025 -0.9872 0.268074 -0.99069 5.312803 0.482514 Stock MCHP DSPG TSEM LPTH AMCC EMKR OSIS POWI RMBS TSM AMKR AXTI A[r] -6% -2% 0% 6% 1% 3% 27% -18% -5% 4% 8% -2% T-Test -1.51896 -0.54477 -0.05397 1.025257 0.244519 0.532966 5.635623 -3.62756 -0.88472 0.965263 1.352127 -0.37095
  • 45.
  • 46. • Stock AMAT IDTI EXAR CY LLTC SIGM PLAB MXIM CRUS XLNX KOPN MRVC CREE MCHP DSPG TSEM LPTH A[r] 0% -1% 1% -1% -2% 4% -2% -1% -1% -1% 14% -1% 2% -1% -1% -3% -3% T-Test 0.032692 -0.17314 0.349254 -0.25887 -0.73778 0.747464 -0.45893 -0.35556 -0.20679 -0.41173 3.136766 -0.27273 0.367635 -0.27162 -0.3785 -0.68594 -0.45095 Stock EMKR OSIS POWI RMBS TSM AMKR AXTI FCS FNSR NVDA QUIK CCMP ISIL MRVL PXLW SLAB AMCC A[r] -2% -1% -1% -1% 0% -3% 0% 0% 0% -2% 2% 0% -1% 1% 0% -1% -1% T-Test -0.32711 -0.18123 -0.29511 -0.13997 -0.07602 -0.72255 0.075322 -0.05436 0.014093 -0.43321 0.31087 0.035145 -0.41465 0.306934 -0.00676 -0.41236 -0.31895
  • 47.
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  • 54. Date Stock T-Test 2/2/2009 6701 2.129433 1/22/2009 6758 2.596411 2/2/2009 6723 4.116129 1/22/2009 7735 2.661969 2/5/2009 6981 3.463484 1/30/2009 6981 2.107546 1/27/2009 6981 2.08564 2/10/2009 6963 2.309086 2/5/2009 6963 3.698643 1/30/2009 6963 2.090748 2/6/2009 6501 2.068623 2/2/2009 6501 9.40179 1/30/2009 6501 2.123685 2/6/2009 6502 2.829403 2/2/2009 6502 4.612963 1/30/2009 6502 7.40011 1/26/2009 6502 1.948835
  • 55.
  • 56.