AI class errata: Difference between revisions

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These are my notes on errata I've discovered in the [[AI class]] coursework.
These are my notes on errata I've discovered in the [[AI class]] coursework. As I discover errata I add it to the bottom of the table.


= Videos =
= Videos =
Line 308: Line 308:
| annotation of
| annotation of
| a notion of
| a notion of
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 1:27
| realtive
| relative
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 2:39
| tivectors
| vectors
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 2:52
| an item of value
| an eigenvalue
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 3:56
| It strikes the
| Extracts the
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 4:05
| clustering the
| cluster in the
|-
| [http://www.youtube.com/watch?v=P-LEH-AFovE P-LEH-AFovE]
| 4:18
| they're affinity
| their affinity
|-
| [http://www.youtube.com/watch?v=pszEzBql4bw pszEzBql4bw]
| 0:17
| represent in reason
| represent and reason
|-
| [http://www.youtube.com/watch?v=pszEzBql4bw pszEzBql4bw]
| 0:55
| agents model
| agent's model
|-
| [http://www.youtube.com/watch?v=_VjyktjNMoM _VjyktjNMoM]
| 0:24
| of\
| of
|-
| [http://www.youtube.com/watch?v=_VjyktjNMoM _VjyktjNMoM]
| 0:24
| unlike improbability
| unlike in probability
|-
| [http://www.youtube.com/watch?v=Th_wM93aF94 Th_wM93aF94]
| 2:38
| there exists in x
| there exists an x
|-
| [http://www.youtube.com/watch?v=JcQrAin3_V8 JcQrAin3_V8]
| 0:10
| O is true
| always true
|-
| [http://www.youtube.com/watch?v=lb1bEUa9WXg lb1bEUa9WXg]
| 1:21
| location its in
| location it's in
|-
| [http://www.youtube.com/watch?v=lb1bEUa9WXg lb1bEUa9WXg]
| 1:59
| of the least states
| of belief states
|-
| [http://www.youtube.com/watch?v=Bxd-j9s82Z8 Bxd-j9s82Z8]
| 0:04
| you're
| your
|-
| [http://www.youtube.com/watch?v=SzeJX57N-_I SzeJX57N-_I]
| 2:33
| this to predict and update
| this predict and update
|-
| [http://www.youtube.com/watch?v=cfYnEgrVemA cfYnEgrVemA]
| 0:11
| start to clean
| suck to clean
|-
| [http://www.youtube.com/watch?v=cfYnEgrVemA cfYnEgrVemA]
| 0:13
| actually turn; and you
| actually turn, and you
|-
| [http://www.youtube.com/watch?v=-o9E15BAL3o -o9E15BAL3o]
| 0:35
| they'll be
| there'll be
|-
| [http://www.youtube.com/watch?v=DgH6NaJHfVQ DgH6NaJHfVQ]
| 0:06
| together from the material
| together some of the material
|-
| [http://www.youtube.com/watch?v=DgH6NaJHfVQ DgH6NaJHfVQ]
| 0:14
| classes of under uncertainty
| classes on uncertainty
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 0:33
| partial observer
| partially observable
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 0:40
| of his aspects
| of these aspects
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 0:51
| was the casting
| with stochastic
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 0:55
| about photos as partial observable
| about fully observable versus partially observable
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 1:06
| all of our evidence falls
| all of our algorithms fall
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 1:09
| right first
| breadth first
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 2:03
| process by a graph
| process is by a graph
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 2:35
| state's transition matrix
| state transition matrix
|-
| [http://www.youtube.com/watch?v=9D35JSWSJAg 9D35JSWSJAg]
| 2:47
| state is prime
| state S'
|-
| [http://www.youtube.com/watch?v=9QMZQkKuYjo 9QMZQkKuYjo]
| 0:18
| of the this robot
| of this robot
|}
|}

Latest revision as of 23:09, 12 November 2011

These are my notes on errata I've discovered in the AI class coursework. As I discover errata I add it to the bottom of the table.

Videos

Video Time Is Should be
4G5mH4FW-WY 0:51 curvatic quadratic
0RmqLOxexh4 0:26 corresponding closed-form
0RmqLOxexh4 0:41 interation iteration
0RmqLOxexh4 0:54 up with it update it
rAcwpZJqAZA 0:46 local minimum local minima
dKKigX6nhyU 0:05 quadratic arrow quadratic error
R1o9wbhnv94 0:43 plausible closed-form
yOSGC67bOIk 0:50 sets data sets
yOSGC67bOIk 1:53 grade descent gradient descent
yOSGC67bOIk 1:57 grade descent gradient descent
yOSGC67bOIk 3:10 and the error is zero, then no update occurs then the error is zero, and no update occurs
xRf9wAeU1kI 1:43 robust-ness robustness
xRf9wAeU1kI 2:00 integer iterative
xRf9wAeU1kI 3:32 so that just plotted just
xRf9wAeU1kI 3:49 Map Mapped
xRf9wAeU1kI 4:36 to write to derive
xRf9wAeU1kI 4:44 These messages These methods
ZLEilYyt28c 0:35 condition probabilities conditional probabilities
PoRpuj4bijU 0:00 is an easy answer is easily answered
tOSoqfK9UNE 1:05 If your graph input If you graph your input
tOSoqfK9UNE 1:35 they are to be one there ought to be one
tOSoqfK9UNE 1:36 your're you're
kFwsW2VtWWA 0:04 are seen not to be completely random determinants seem not to be completely randomly determinate
EZEOXNFgu8M 0:08 interpretively assume typically assume
EZEOXNFgu8M 0:38 structure and data structure in data
EZEOXNFgu8M 1:21 drawing signal joint signal
W2dkDmHFMWg 2:04 They were derived They will be derived
zaKjh2N8jN4 0:18 found interatively found iteratively
zaKjh2N8jN4 0:34 Euclidian Euclidean
zaKjh2N8jN4 1:28 has attained the center is attained at the center
myqnyxkdQpc 0:17 corresponding step correspondence step
myqnyxkdQpc 1:10 local minimum local minima
3zlXl82LUVI 0:02 one interation one iteration
_DhelJs0BFc 0:44 horizontal access horizontal axis
_DhelJs0BFc 2:04 then it is than it is
_DhelJs0BFc 2:08 periphery summary over here periphery somewhere over here
rMcw3uu4efY 1:55 complete the derivative for spectrum mu compute the derivative with respect to mu
rMcw3uu4efY 2:03 we can still get this we instead get this
rMcw3uu4efY 2:11 next to zero it's still zero
rMcw3uu4efY 2:56 stresses internal is just its internal
pRGEQy7BgiY 0:04 multivariant multivariate
mlz-1yfyeoU 0:06 the fit from data how to fit them from data
1CWDWmF0i2s 0:47 Their movement is smooth away They move in a smoother way
tTr7547zVCc 0:07 sum of all possible sum over all possible
tTr7547zVCc 0:45 should we call which we will call
TFViJ3P6NwM 0:12 specifically M1 sigma specifically mu and sigma
DODedtJZ3FA 0:17 first situation first iteration
_-Ol1cXIWvQ 0:40 memorisation of a criterion minimization of a criterion
_-Ol1cXIWvQ 1:40 tests would show tests should show
lDyEk72TezE 0:04 learning avenues learning algorithms
lDyEk72TezE 0:26 we're going to we want to
AaSibhWmkQM 0:06 almost information almost no information
5m6TeKw_e1M 0:12 to perfect the data to project the data
5m6TeKw_e1M 1:17 Your axes are Your x's are
5m6TeKw_e1M 1:23 4 x1 For x1
5m6TeKw_e1M 2:31 Where this Whereas this
5m6TeKw_e1M 2:36 So this single So this is the single
VxAMBkDUfeg 0:31 we would do would do
VxAMBkDUfeg 0:39 "K" mean k-means
P-LEH-AFovE 0:21 annotation of a notion of
P-LEH-AFovE 1:27 realtive relative
P-LEH-AFovE 2:39 tivectors vectors
P-LEH-AFovE 2:52 an item of value an eigenvalue
P-LEH-AFovE 3:56 It strikes the Extracts the
P-LEH-AFovE 4:05 clustering the cluster in the
P-LEH-AFovE 4:18 they're affinity their affinity
pszEzBql4bw 0:17 represent in reason represent and reason
pszEzBql4bw 0:55 agents model agent's model
_VjyktjNMoM 0:24 of\ of
_VjyktjNMoM 0:24 unlike improbability unlike in probability
Th_wM93aF94 2:38 there exists in x there exists an x
JcQrAin3_V8 0:10 O is true always true
lb1bEUa9WXg 1:21 location its in location it's in
lb1bEUa9WXg 1:59 of the least states of belief states
Bxd-j9s82Z8 0:04 you're your
SzeJX57N-_I 2:33 this to predict and update this predict and update
cfYnEgrVemA 0:11 start to clean suck to clean
cfYnEgrVemA 0:13 actually turn; and you actually turn, and you
-o9E15BAL3o 0:35 they'll be there'll be
DgH6NaJHfVQ 0:06 together from the material together some of the material
DgH6NaJHfVQ 0:14 classes of under uncertainty classes on uncertainty
9D35JSWSJAg 0:33 partial observer partially observable
9D35JSWSJAg 0:40 of his aspects of these aspects
9D35JSWSJAg 0:51 was the casting with stochastic
9D35JSWSJAg 0:55 about photos as partial observable about fully observable versus partially observable
9D35JSWSJAg 1:06 all of our evidence falls all of our algorithms fall
9D35JSWSJAg 1:09 right first breadth first
9D35JSWSJAg 2:03 process by a graph process is by a graph
9D35JSWSJAg 2:35 state's transition matrix state transition matrix
9D35JSWSJAg 2:47 state is prime state S'
9QMZQkKuYjo 0:18 of the this robot of this robot