Spoiler One Piece Chapter 1171 Spoilers Discussion

What will be Loki next power ?


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Imu: "Mu bestowed “immortality” and “strength” upon an “Ancient Giant Warrior”...!!
Who is already a rare spectacle in himself... A “monster”!! Huff...
And someone killed it...!! Who did it...!? WHAT IS in “Elbaph”!!? Huff…”


Mars: "Let us dispatch a mission. We can take advantage of the Abyss that Harald left in Elbaph to..."

Imu: "Enough...!! It will just lead to more casualties among my knights!!
These “covenants” come at a price for Mu!! Huff... Huff..."


Imu was scared of loki though.
Imu was scared of the unknown force that killed Harald. This was like when people said Sakazuki was scared of the fodder samurai.
 
Imu: "Mu bestowed “immortality” and “strength” upon an “Ancient Giant Warrior”...!!
Who is already a rare spectacle in himself... A “monster”!! Huff...
And someone killed it...!! Who did it...!? WHAT IS in “Elbaph”!!? Huff…”


Mars: "Let us dispatch a mission. We can take advantage of the Abyss that Harald left in Elbaph to..."

Imu: "Enough...!! It will just lead to more casualties among my knights!!
These “covenants” come at a price for Mu!! Huff... Huff..."


Imu was scared of loki though.
Frankly, what I make out of this is, Imu didn't expect someone on that level on Elbaf. There were enough characters around over the world. Let that be Kaidou, Linlin or Shanks.

World government only sent Harald after Fodder pirates. Why not send him to a Yonkou? They know they will be hitting above their Weight class in those regards.

A lot of things went into play for defeating Harald. Ans if he was acting Maniac like Xebec, All of them were as good as dead.
 
I found out my girlfriend cheated on me. Instead of breaking up right away, I made a fake account, sent her the proof anonymously, and told her that if she didn’t send me money, I’d tell her boyfriend everything.

I shared this whole plan with my best friend for advice, but this mf went behind my back and shared everything with my girlfriend.

When confronted, he said
Why does it matter? I thought she deserved to know.

He wasn’t just betraying me. He was behaving like a random variable after you marginalize out all the hidden information.

In probability, to understand what you actually know, you marginalize over hidden variables.

That means you sum over all the possibilities you can’t observe to compute the probability of what you can observe.

Marginal probability is a statistical measure that represents the probability of a single event by aggregating over all possible values of other variables.

Formula
P(A) = Σ P(A, Bi)

Where
P(A) = Marginal probability of event A
P(A, Bi) = Joint probability of A and B
Σ = Summation

Let's take an example and solve step by step

A dating app wants to find the probability of users sending messages, regardless of whether they get a response. The data shows message sent vs response received:

Short forms
- M = Message
- R = Response

Joint Probability Table
- M (Yes), R (Yes) = 0.30
- M (Yes), R (No) = 0.25
- M (No), R (Yes) = 0.10
- M (No), R (No) = 0.35

Step 1 What we want to marginalize
- We want P(M = Yes)

Step 2 Joint probabilities for M = Yes
- P(M = Yes, R = Yes) = 0.30
- P(M = Yes, R = No) = 0.25

Step 3 Apply marginal probability
- P(M = Yes)
- P(M=Yes, R=Yes) + P(M=Yes, R=No)
- 0.30 + 0.25 = 0.55

P(Message = Yes) = 0.55

Final Answer
The marginal probability of a user sending a message is 0.55 or 55%, regardless of whether they receive a response.

Congratulations, you've just learned Marginal Probability.

Bonus: Applications in AI/ML

1. Bayesian Networks:
Computing marginal probabilities by summing out irrelevant variables to make predictions and inferences in graphical models.

2. Latent Variable Models:
In topic modeling (LDA) and hidden Markov models, marginalizing over hidden states to find the probability of observed data.

3. Feature Selection:
Identifying which features independently correlate with target variables by computing marginal distributions, helping reduce dimensionality.

4. Probabilistic Classification:
Naive Bayes classifiers use marginal probabilities of features to classify data, assuming independence between features.

You just wasted your time reading this copy & paste nonsense, hahahahahaha!!!
 
Frankly, what I make out of this is, Imu didn't expect someone on that level on Elbaf. There were enough characters around over the world. Let that be Kaidou, Linlin or Shanks.

World government only sent Harald after Fodder pirates. Why not send him to a Yonkou? They know they will be hitting above their Weight class in those regards.

A lot of things went into play for defeating Harald. Ans if he was acting Maniac like Xebec, All of them were as good as dead.
Bruh imu saw Roger , WB , Garp , Rocks in GV and took their attack and wasn't remotely interested by them or affected by them. Loki scales far above Roger , WB , Garp , Rocks hence.
 
Since Shanks was there when Loki vowed to fight against the World Government and did nothing for years, I think it's even more likely now that they are in a friendly term with one another, and thus the events of 6years ago will not turn out to be what was presented

The fact that Loki somehow knows Shanks' location suggest he might even have his vivre card
No cause even when he saw Shamrock he still said he mad at shanks. Shanks definitely stop him cause he was going to get himself killed.
 
I found out my girlfriend cheated on me. Instead of breaking up right away, I made a fake account, sent her the proof anonymously, and told her that if she didn’t send me money, I’d tell her boyfriend everything.

I shared this whole plan with my best friend for advice, but this mf went behind my back and shared everything with my girlfriend.

When confronted, he said
Why does it matter? I thought she deserved to know.

He wasn’t just betraying me. He was behaving like a random variable after you marginalize out all the hidden information.

In probability, to understand what you actually know, you marginalize over hidden variables.

That means you sum over all the possibilities you can’t observe to compute the probability of what you can observe.

Marginal probability is a statistical measure that represents the probability of a single event by aggregating over all possible values of other variables.

Formula
P(A) = Σ P(A, Bi)

Where
P(A) = Marginal probability of event A
P(A, Bi) = Joint probability of A and B
Σ = Summation

Let's take an example and solve step by step

A dating app wants to find the probability of users sending messages, regardless of whether they get a response. The data shows message sent vs response received:

Short forms
- M = Message
- R = Response

Joint Probability Table
- M (Yes), R (Yes) = 0.30
- M (Yes), R (No) = 0.25
- M (No), R (Yes) = 0.10
- M (No), R (No) = 0.35

Step 1 What we want to marginalize
- We want P(M = Yes)

Step 2 Joint probabilities for M = Yes
- P(M = Yes, R = Yes) = 0.30
- P(M = Yes, R = No) = 0.25

Step 3 Apply marginal probability
- P(M = Yes)
- P(M=Yes, R=Yes) + P(M=Yes, R=No)
- 0.30 + 0.25 = 0.55

P(Message = Yes) = 0.55

Final Answer
The marginal probability of a user sending a message is 0.55 or 55%, regardless of whether they receive a response.

Congratulations, you've just learned Marginal Probability.

Bonus: Applications in AI/ML

1. Bayesian Networks:
Computing marginal probabilities by summing out irrelevant variables to make predictions and inferences in graphical models.

2. Latent Variable Models:
In topic modeling (LDA) and hidden Markov models, marginalizing over hidden states to find the probability of observed data.

3. Feature Selection:
Identifying which features independently correlate with target variables by computing marginal distributions, helping reduce dimensionality.

4. Probabilistic Classification:
Naive Bayes classifiers use marginal probabilities of features to classify data, assuming independence between features.

You just wasted your time reading this copy & paste nonsense, hahahahahaha!!!
:willight:
 
Gaban literally said they slowed down his regen.
Yes than later in the chapter he realizes shit ain't sweet and said he never faced somebody with Regen and CoC before. Then another time lapse and him and Lhanks on the floor bro has a scar on his damn face and whole body full of bandages.
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Bruh imu saw Roger , WB , Garp , Rocks in GV and took their attack and wasn't remotely interested by them or affected by them. Loki scales far above Roger , WB , Garp , Rocks hence.
Dumb has hell
 
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