Traduzione fiamminga della mini pas-add: affidabilità e validità
Testo completo
(2)
(3) Ǧǣ ǣ ͛͝͝͝͡͠ ǣǤ ǣ͚͘͘͠Ǧ͚͘͘͡.
(4)
(5)
(6) ͕
(7) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǥǥǥǤ͛ ͕Ǥ͕ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤ͘ ͕Ǥ͖ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤ͙ ͕Ǥ͗
(8)
(9) ǦǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤ͚ ͕Ǥ͘ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǥǤǤ͛ ͕Ǥ͙ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͜ ͕Ǥ͚ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǥǥǤ͜ ͕Ǥ͛ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǥǥǥǥǥǥǥǥǥǥǥ͝ ͕Ǥ͜ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǥǤǤǥǥǥǥǥǤǤǤ͝ ͖Ǥ ǣ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤ͙͘ ͖Ǥ͕Ǥ ǡǡǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǥǥǥ͕͔ ͖Ǥ͖Ǥ
(10) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǥǥǥǥǤǤǤ͕͖ ͖Ǥ͖Ǥ͕Ǥ
(11) ǥǥǥǥǥǥǥǥǥǥǥǤǤǥǥǥǥǥǥǥǥǥǥǥǥ͕͖ ͖Ǥ͖Ǥ͖ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤ͕͗ ͖Ǥ͖Ǥ͗Ǥ
(12) ǥǥǥǥǥǥǥǥǥǥǥǥǥǤ͕͘ ͖Ǥ͖Ǥ͘Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤ͕͚ ͖Ǥ͖Ǥ͙Ǥ ǥǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤ͕͛ ͖Ǥ͖Ǥ͚ǤǥǥǥǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǥǤǤǤ͕͜ ͖Ǥ͖Ǥ͛Ǥ ǥǥǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͖͔ ͖Ǥ͖Ǥ͜ǥǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͖͕ ͖Ǥ͖Ǥ͝ ǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤ͖͖ ͗ǤǥǥǥǥǥǥǥǤǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤ͖͗ ͗Ǥ͕Ǥ
(13)
(14) ǦǥǥǥǥǥǥǥǥǤǥǥǥǥǥǥǥǥǥǥǤǤǤǤǥǥ͖͘ ͗Ǥ͖Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤ͖͚ ͗Ǥ͗Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǥǥǤ͖͗ ͗Ǥ͗Ǥ͕Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǤǤǤǤǤǤǤ͖͗ ͗Ǥ͗Ǥ͖Ǥ
(15) ǤǥǥǤǤǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥ͗͘ ͗Ǥ͗Ǥ͗Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥ͗͜ ͗Ǥ͘Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͘͝ ͗Ǥ͘Ǥ͕Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǥǥǥǤǤǤ͘͝ ͗Ǥ͘Ǥ͖Ǥ
(16) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͙͕. 2.
(17) ͗Ǥ͘Ǥ͗Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥ͙͖ ͜ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤǤ͝͠ ͘Ǥ͕
(18) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǥǥǥǥǥǥǥǥǥǤǤǤǥ͙͝ ͘Ǥ͕Ǥ͕Ǥ
(19) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥ͙͝ ͘Ǥ͕Ǥ͖Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͚͕ ͘Ǥ͕Ǥ͗Ǥ
(20)
(21) Ǧ
(22) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤ͚͖ ͘Ǥ͖ǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤ͚͙ ͘Ǥ͖Ǥ͕ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǥǥǤǤǤǥ͚͙ ͘Ǥ͖Ǥ͖ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤǤǤǤ͕͛ ͘Ǥ͖Ǥ͗Ǥ
(23)
(24) ǦǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǤǤǤ͛͘ ͘Ǥ͖Ǥ͘Ǥ
(25) ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͛͝ ͝Ǥ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͜͠ ǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǥǤǤǤ͟͠. . 3.
(26) ͙Ǥ
(27)
(28) ͙Ǥ͙ . . . . . . . . . . Ȁ Ǥ ǯ Ǥ
(29) ° Ǥ
(30) Ǥ Ǥ ǡ ǡ ǡǥ Ǥ
(31) Ǥ
(32) ° ǡ ǡǡ ǡ Ǥ
(33) Ǥ
(34) °ǡ ¿ǡ Ǥ ǯ° ǡ ǡ Ǥ . 4.
(35) ͙Ǥ͚
(36)
(37) ǦǤ ǯ° Ǥǯ ǯ ±Ǥ ǡ͕͗͝͝ǡ Ö ȋ ǡ Ǣ ǡ͕͗͜͝ Ǣ ǡ ͕͜͜͝ ȌǤ ǯ Ǧ ǯǤ ȋ Ǧ Ȍ ǣ ǯ ǡ °Ǥ
(38) ° Ǥ
(39) Ǥǯ° Ǥ ǯǯǤ ǯDz dz Ǥ Ǥ ǯ Ǥ °î Ǧ ȋǡ͕͜͝͝ȌǤ ° ͖͝ ǡ ȋ Ǧ ȌǤ Ȁ ǡ Ǥ ǯ° ǯǤ . 5.
(40) . ͕Ǥ͗
(41)
(42) Ǧ ȋ Ǣ Ǥǡ͕͜͝͝Ȍ°͚͚ Ǥ
(43)
(44) Ǧ ° Ǧ Ǧ ǣ ° Ǥ ° Ǥ Ǥ
(45)
(46)
(47) Ǧ
(48) Ǥ ȋ
(49) ǡ
(50) Ǧ͕͔Ȍ.
(51)
(52) Ǧ ° ǡ ǡ ǡ Ǥ ǯ ǡ Ǥ
(53) Ǧ Ǥ ǯ Ǥ
(54)
(55) Ǧ ͕͔ Ǥ ǣ ǡǡ Ȁǡ ǡ ǡ Ǥǯ Ǥ ǡǡ Ǥ 6.
(56) Ǥ ǯ î Ǥ Ö Ǥ Ǧ Ǥ
(57)
(58) Ǧ° Ǥ° Ǥ ǯ° Ǥ Ǥ . ͙Ǥ͜ ǯ ° ǯ
(59)
(60) Ǧ ǯǤ ǡ ǡ ǯ Ǥ Ǥ °
(61)
(62) Ǧ
(63)
(64) Ǧ
(65) Ǥ
(66)
(67) Ǧ î Ǥ . 7.
(68) ͙Ǥ͝ ° Ǥ ǯǤ ǯ Ǥ ° ǯǡ ǣ ǡ ǡ ǡǡǡǡǡ ǡ ǡ Ǥ ǣ Ǥ Ǥ ¿ ° Ǥ
(69) °ǣ ǯ Ǥ ǯ ȋȌǤ ȋȌǤ Ǥ ǯ
(70)
(71) Ǧ Ǥ . . ǯ Ǥ ǡ Ǥ
(72) ° Ǥ ±ǡ ǯ ǡ Ǥ ǯ
(73)
(74) Ǧ ° Ǥ . 8.
(75) ͙Ǥ͞ .
(76)
(77) Ǧ ° Ǥ ǯ ǯ
(78)
(79) ǦǤ
(80) ° Ǥ
(81)
(82) Ǧ° ǡ ǡ ǯ ǯǤÖ°͗͛͛ ͗͛ Ǥ
(83)
(84) Ǧǡ
(85) ǡ Ǥ . . ͙Ǥ͟ ǯ° Ǥ
(86) ǯ ȋ ǡ ̸ǡ ̸ȌǤ
(87) ° ǦǤ ǦǤ
(88)
(89)
(90) Ǧ ± ǤǦ͔͗ ͕͗Ǧ͗͜Ǥ
(91) Ǯǯ° Ǥ î° ǡ Ǥ
(92) ǯ° ǦǤ
(93) ° ǯ ǦǤ ° ± ǯǤ ǯȋ
(94) ͖Ȍ ȋ ȌǤǯ ǡ Ǥ . 9.
(95) ͙Ǥ͠ ǯ°ǣ ȋ ǡǡ ǯ ǡȌǤ ǯǡ ǡ ǣ Ǥ. ȋ
(96)
(97) ǦȌǢ. Ǥ. . Ǣ Ǥ. Ǥ. °
(98)
(99) Ǧǣ. Ǥ.
(100) Ǣ. Ǥ. Ǥ. . 10.
(101) ͖Ǥ
(102)
(103)
(104)
(105) ǣ ͚Ǥ͙Ǥ ǡǡ
(106) ° ͚͛͘ǡ͗͛͛ǯ ǡ͔͝ ͝ Ǥǯ ¿ Ǥ ° Ǥ °î ȋ͚͔ΨȌ ȋ͚͛ΨȌǤ ǯ° ͔͘Ǥ °͚͗ǡ°ȋ͙͚ΨȌǤ Ǥ ǣǮ ǯǡǮ ǯǡǮ ȀȀ ǯǡǮǯǡǮ ǯǡ Ǯ ǯǡ ǮȀǯǡ Ǯ Ȁǯǡ Ǯ ǯǡ Ǯǯǡ Ǯ ǯ ǯǡ Ǯ ǯǡ Ǯ ǯǡǮǯǡǮ ǯǡǮ Ȁ ǯǮ ǯǤ î ȋ ͛͘Ψ ͘͘ΨȌ Ǥ ȋ͖͖ΨȌ ȋ͖͘ΨȌǤ ǯ ȋ͘͘ΨȌǤǯ ǡÖǡ ͝ ° Ǥ . 11.
(107) Ǯǯ ȋǮ ǯǮ ǯȌǡ ǡî ȋ͛͘Ψ͚͗ΨȌǤ ȋǮǯǡǯǯǡǯ ǯ ǯǡǯ ǯǡǯ ǯȌ ͝ Ǥ ǡ ǡ ǡ îǤ. Ǥǣ͕Ǥ Ǥ.
(108)
(109) . ȋ Ȍ ȋȌ ͕ǣ ͖ǣ ͗ǣ
(110) ͘ǣ ͙ǣ ͚ǣ ͛ǣ ͜ǣ ͝ǣ ͕͔ǣ ͕͕ǣ ͕͖ǣ ͕͗ǣ ͕͘ǣ ͕͙ǣ ͕͚ǣ ͕͛ǣ ͕͜ǣ ͕͝ǣ. ǯ ȋγ͛͟͟Ȍ ͚͔ ͖͘ ͕͘ ͗ ͕͔ ͜ ͖͖ ͘ ͗ ͗ ͕͗ ͖ ͔ ͗ ͕͜ ͙ ͖ ͕ ͖͗ ͖͕ ͖͘. . 12. ǣ ǣ ȋγ͘͡Ȍ ȋγ͡Ȍ ͙͚ ͚͛ ͚͗ ͚͗ ͕͔ ͖͖ ͖ ͕͕ ͛͘ ͘͘ ͕͗ ͗͗ ͕͗ ͕͕ ͕͗ ͖͖ ͜ ͖͖ ͘ Ǧ ͕͗ ͗͗ ͗ ͕͕ ͕ Ǧ ͗ Ǧ ͕͖ ͖͖ ͝ Ǧ ͜ ͘͘ ͚ Ǧ ͚͗ ͕͕ ͖͕ ͘͘ ͕͛ Ǧ.
(111) Ǥǣ͙ǤǯǤ 50 45 40 35 30 25 20 15 10 5 0. ͕. ͖. ͗ ͘. ͙. ͚. ͛. . ͜. ͝ ͕͔ ͕͕ ͕͖ ͕͗ ͕͘ ͕͙ ͕͚ ͕͛ ͕͜ ͕͝. ǣ. ǣ. ͚Ǥ͚ Ǥ °
(112)
(113) ǦǤ
(114) ǡ¿ ǡ ǡǡǡǤ ǯǤ . ͚Ǥ͚Ǥ͙.
(115) . . ǯ Ǥ
(116) ǯ° ͖͔ȋ͜ΨȌ ͙͔Ǧ͔͛ ȋ͔͗ΨȌǤ ǡ ǡ îǢ Ǥ
(117) ͙͔Ǧ͔͛
(118) ȋ͛͘Ψ͕͛Ψ ȌǤ͖͔Ǧ͔͗Ǥ. 13.
(119) Ǥǣ͖Ǥ
(120) Ǥ.
(121) β͖͔ ͖͔Ǧ͙͗ ͙͗Ǧ͙͔ ͙͔Ǧ͔͛. ǯ ȋγ͛͟͟Ȍ ͜ ͖͖ ͕͘ ͔͗. ǣ ȋγ͘͡Ȍ Ǧ ͚ ͕͝ ͛͘. ǣ ȋγ͡Ȍ Ǧ ͕͘ ͕͘ ͕͛. Ǥǣ͖Ǥ
(122) Ǥ. ͔͜ ͙͛ ͔͛ ͚͙ ͚͔ ͙͙ ͙͔ ͙͘ ͔͘ ͙͗ ͔͗ ͖͙ ͖͔ ͕͙ ͕͔ ͙ ͔ β͖͔. ͖͔Ǧ͙͗. ǯ . ͙͗Ǧ͙͔. ǣ. ͙͔Ǧ͔͛. ǣ. ͚Ǥ͚Ǥ͚. .
(123) ° ȋDzdzȌ ǡ ȋ͛͛ΨȌ ǯ ǡǡȋ͘͘ΨȌǤ î ǯǯ Ǥ. 14.
(124) ǣ͗Ǥ Ǥ.
(125)
(126)
(127)
(128) . . ǣ. ǯ ȋγ͛͟͟Ȍ ȋγ͘͡Ȍ ͝ ͗ ͖͘ ͛ ͘͘ ͗͘ ͖͖ ͙͚ ͗ǤǤ. ǣ ȋγ͡Ȍ Ǧ ͕͕ ͕͕ ͛͛. ͙͜ ͔͜ ͙͛ ͔͛ ͚͙ ͚͔ ͙͙ ͙͔ ͙͘ ͔͘ ͙͗ ͔͗ ͖͙ ͖͔ ͕͙ ͕͔ ͙ ͔ . . ǯ . . ǣ. . ǣ. ͚Ǥ͚Ǥ͛
(129) Ǥ
(130) Ǥ
(131) î
(132) Ǥ° Ǧ ǯ Ǥ ǯ°ǯ ȋǦ °βǡ͔͔͔͕ȌǤ ° Ǥ ° î ȋ Ǧ ° βǡ͔͔͔͕Ȍ ȋ͕͔͔ΨȌ . 15.
(133) Dz dz ͖͔Ǧ͔͗ ǯ
(134) ǡ ȋ͕͔͔ΨȌ Dzdz ͙͗Ǧ͙͔ ǯ
(135) Ǥ
(136) ǯ dzdzǤ ǯ° ͖͔
(137) Ǥ
(138) ǯ ° ͝͝ΨǤ. Ǥǣ͘Ǥ
(139) Ǧ Ǥ. . . . Ǥ . Ǥ Ǥǣ . Ǥ Ǥǣ . . ζ͚͘ . ͚͘Ǧ͛͝ ͔͝ ͔ ͔ ͔. . ͛͝Ǧ͘͝ ͗ ͚͜ ͕ ͔. ͗ ͖͕ ͕ ͔ . ͗ ͗ ͘͜ ͔. ͔ ͗͜ ͔ ͔ . ͔ ͔ ͕͘ ͕͔͔ . ͔ ͕͛ ͙͖ ͔ . Ǧ ͕͔͔ ͔ ͔. Ǧ ͔ ͔ ͔. ͗ ͔ ͕͝ ͕͔͔ . . Ǧ Ǧ Ǧ Ǧ . ͗ ͕͘ ͔͜ ͔ . ͗͝ ͔ ͔ ͔ . ͘͝Ǧ͘͟ . ͕͔͔ ͔ ͘͜ ͕͔͔ . Ǧ ͔ ͕͔͔ ͔. Ǧ ͔ ͔ ͕͔͔. Ǥǣ͙Ǥ
(140) Ǥ.
(141) Ǧ . ͝ ͝ ͚ ͘. ͘͝͝ǡ͔͖͛͜ ͖͕͜ǡ͚͘ ͘͝ǡ͙͙ ͕͘ǡ͔͔. 16. βǡ͔͔͔͕ ͔ǡ͔͔͛͗ βǡ͔͔͔͕ βǡ͔͔͔͕.
(142) ͚Ǥ͚Ǥ͜. . ȋǡ ǡ
(143) ǡ ǡ ǡ ǡ ǡ ȌǤ °
(144)
(145) Ǧ Ǥ Ǣ° Ǥ î ǯ ° ǯ ȋ͕͘ΨȌ Ǣ ǯ ȋ͕͛ΨȌǡǡǡ °Ö ȋ͖͖ΨȌǤ Ǥ
(146) ǡ ǡ î ȋ͕͛Ψ͖͖Ψ ͝Ψ͚Ψǯ ȌǤ ǯ Ǥ Ǥǣ͚Ǥ ǡǤ.
(147)
(148) .
(149) Ǥ Ǥ . ǯ ȋγ͛͟͟Ȍ ͜ ͗ ͗ ͙ ͝ ͕͘ ͚ ͖. 17. ǣ ȋγ͘͡Ȍ ͕͖ ͕ ͗ ͛ ͕͛ ͕͛ ͖͖ ͖. ǣ ȋγ͡Ȍ Ǧ Ǧ Ǧ Ǧ Ǧ Ǧ Ǧ Ǧ.
(150) Ǥǣ͘Ǥ Ǥ. ͖͘ ͖͖ ͖͔ ͕͜ ͕͚ ͕͘ ͕͖ ͕͔ ͜ ͚ ͘ ͖ ͔ . .
(151) Ǥ . ǯ . . . ǣ. Ǥ . . ǣ. ͚Ǥ͚Ǥ͝. .
(152) ° ° ǡ ǡ ǡ ͕͝Ψ Ǣ î Ǥ
(153) î ǯǦ ͕͖Ψ Ǥ ° Ǥ
(154) ° ° ȋ͕Ψ ͗ΨȌǤ Ǥǯ Ǥ. . 18.
(155) Ǥǣ͛Ǥ ǡǤ.
(156) . ǯ ǣ ȋγ͛͟͟Ȍ ȋγ͘͡Ȍ ͗͛ ͕͝ Ǧ ͖͗ ͙͗ ͖͔ ͕͔
(157) ͛ ͖͔ ǯ ͛ ͖͝ ͕ ͗ Ǧ ͕͚ ͖͔ Ǥ͙Ǥ Ǥ. ǣ ȋγ͡Ȍ ͖͖ ͕͕ Ǧ ͕͕ Ǧ Ǧ ͕͕. ͕͔͔ ͔͝ ͔͜ ͔͛ ͚͔ ͙͔ ͔͘ ͔͗ ͖͔ ͕͔ ͔ . Ǧ . . ǯ .
(158) . ǯ. ǣ. 19. . Ǧ . ǣ.
(159) ͚Ǥ͚Ǥ͞. . ǯǤ ͙͚Ψ ǡ ǯ͜͜Ψ ͚͘Ψǯ Ǥ. Ǥǣ͜Ǥ Ǥ.
(160) . ǯ ǣ ȋγ͛͟͟Ȍ ȋγ͘͡Ȍ ͔ 1 ͖ ͔ ͞ ͔ ͚ ͔ ͚͘ ͔ ͕͙ ͙͚ ͜ ͘͘ Ǥǣ͚ǤǤ. ǣ ȋγ͡Ȍ ͜͜ ͕ ͕ ͖ ͜ ͕ ͚. ͕͔͔ ͔͝ ͔͜ ͔͛ ͚͔ ͙͔ ͔͘ ͔͗ ͖͔ ͕͔ ͔ . . ǯ . . . ǣ. . 20. . . ǣ.
(161) ͚Ǥ͚Ǥ͟. . ǯǯ ° Ǧ ȋ͛͘Ψ͗͗ΨȌǤ ǡǡ Ǥ ǡ Ǥ Ǥǣ͝Ǥ Ǥ
(162)
(163) ǯ
(164)
(165) . ǯ ǣ ǣ ȋγ͘͡Ȍ ȋγ͡Ȍ ȋγ͛͟͟Ȍ ͕ ͕͕ ͕ ͜ ͖͖ ͖ ͕͔ ͔ ͖ ͛͘ ͗͗ ͕͘ ͖͘ ͔ ͚ ͔ ͔ ͗ ͖͕ ͕͕ ͙͕ ͖ ͖͖ ͖͛ Ǥǣ͛Ǥ Ǥ ͙͙ ͙͔ ͙͘ ͔͘ ͙͗ ͔͗ ͖͙ ͖͔ ͕͙ ͕͔ ͙ ͔ . . ǯ . ǣ. 21. . . ǣ.
(166) ͚Ǥ͚Ǥ͠. . î͚͔Ψ Ǥ ǯ ǯ ° ± Ǥ ° ǣ ǯ° ° Ǥ Ǥǣ͕͔Ǥ Ǥ
(167)
(168) . . ǯ ǣ ȋγ͛͟͟Ȍ ȋγ͘͡Ȍ ͖ ͖͖ ͕ ͕͕ ͕ ͖͖ ͜ ͖͖ ͚͕ ͕͕ Ǥǣ͜ǤǤ . ǣ ȋγ͡Ȍ ͚ ͗ ͜ ͕͖ ͚͗. ͔͛ ͚͙ ͚͔ ͙͙ ͙͔ ͙͘ ͔͘ ͙͗ ͔͗ ͖͙ ͖͔ ͕͙ ͕͔ ͙ ͔ . . ǯ . . ǣ. 22. . . ǣ.
(169) ͚Ǥ͚Ǥ͡. . Ǥ ° Ǥ. Ǥǣ͕͕Ǥ ǡǤ.
(170)
(171) .
(172)
(173) . Ǥ . ǯ ȋγ͛͟͟Ȍ ͚ ͕͕ ͗͗. ǣ ȋγ͘͡Ȍ ͔ ͔ ͗͗. ǣ ȋγ͡Ȍ ͛ ͛ ͙͖. Ǥǣ͝Ǥ ǡǤ. ͙͙ ͙͔ ͙͘ ͔͘ ͙͗ ͔͗ ͖͙ ͖͔ ͕͙ ͕͔ ͙ ͔ . ǯ . Ǥ . ǣ. 23. . ǣ.
(174) ͛Ǥ.
(175)
(176)
(177) ǯ. ǯ° Ǥ ǣ Ǧ ǯ° Ǧ î Ǥ Ǧ ° Ǧ Ǥ ǯ ǯ ǯ Ǥ Ǧ ° Ǥ Ǧ ǯÖ Ǥ Ǥ Ǧ
(178) ǯ° ǯ ° ȋǤ Ǥǡ͕͛͝͝ȌǤ. ǯ
(179)
(180) Ǧ ° Ǥ°ǯ Ǥ
(181) ǡ ǡ ° ǯ ǯ ǯ ǡ
(182)
(183) Ǧ ǡ Ǥ ǡ ǡ ° ǯ ǯ ȋ ȌǤ 24.
(184) ͛Ǥ͙Ǥ.
(185)
(186) Ǧ.
(187)
(188) Ǧ° Ǥ ° Ǥ î Ǥ ǯÖǤ î ǣ ͚Ǥ ǡ ǡ Ǥ ͛Ǥ.
(189) ǡ. . . . Ǥ. ǯ. . Ǥ. ͕͔Ǥ ǡ ǯ Ǥ ͕͕Ǥ. . . . . . . . . Ǥ. ͕͖Ǥ ǯ Ǥ ͕͗Ǥ Ǥ. ͚Ǧ͛ ǡ ǡ Ǥî Ǥ îȋ͗͗ΨȌǤ ȋȌǡ ͗͜ΨǤ ǯ
(190) ͕͜ΨǤ
(191) ͚͖ΨǤÖ ǯǤ ͚Ǧ͛Ǧ͕͔Ǧ͕͕Ǧ͕͖Ǧ͕͗ Ǥ
(192) Ǥ. 25.
(193) Ǥǣ͕͖Ǥ
(194)
(195) ǦǤ. λ ͕ ͖ ͗ ͘ ͙ ͚ ͛.
(196)
(197) . . . ͚͕͔͕͕͕͖͕͕͕͙͕͚͕͕͕͖͔͖͕͖͖͖͖͖͛͗͛͗͘͘͘͜͝ ͚͕͔͖͚͖͖͖͔͛͛͗͜͝.
(198) Ȁ. ͚͙͚͔͕͛͗͗͗͛͗͗͘͘͜͜͝͝. Ǥ. ͕͖͗͗͗͗͗͘. . ͖͙͚͗͛͘͘͘͘͘͘͘͘͘͜͝. Ǥ . ͙͚͕͕͕͖͕͗͛͗͘. . ͙͔͙͕͙͖͙͙͙͙͙͚͙͙͙͚͔͚͕͚͖͚͚͚͙͚͚͗͛͗͘͘͜͝ ǣ Ǥ. . 26.
(199) ͛Ǥ͚Ǥ. . ̵̵ Ȁ ǡ ȋǡ͕͚͜͝ȌǤ ǯÖǣǤ Ǥ. ǯ Ǥ Ǥ
(200) ǣ. Ǥ
(201) . . Ǥ Ǥ Ǥ ǯ. . ¿ Ǥ ǯ Ǥ Ǥ . . Ǥ ° ǡ Ǥ ȋǤ ǡ͕͛͝͝Ȍ Ǥ. ǯ ǡ ǡ Ǥ ǯ ǯǤ Ǥ
(202) ǯ ǯ Ǥ 27.
(203) ǯ
(204)
(205) Ǧ ° ǯ ± Ǥ ǯ ° ȋ ǦȌǤ
(206) Ǧ ǯǤ Ǧ ǯ ¿ Ǥ
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