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如何赢得赏金猎人与灵罗娃娃的对抗赛赏金猎人 is in the a tier of champions

赏金猎人 vs 灵罗娃娃

如何在LoL中以赏金猎人的身份击败灵罗娃娃赏金猎人 is in the b tier of champions
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如何击败灵罗娃娃成为赏金猎人

based on 10,645 赏金猎人 vs 灵罗娃娃 matchups
胜率
54.7 %
kda
2.52
受欢迎度
2.1 %

How We Analyze LoL Champion Counters

We at MOBA Champion analyze millions of recently ranked League rounds every week. In our data, 赏金猎人 battled 灵罗娃娃 10645 times. Including so many matchups for 赏金猎人 versus 灵罗娃娃 provides us a lot of confidence in our capacity to provide useful data and a pro build to smash 灵罗娃娃. This particular counter pairing is somewhat rare. 赏金猎人 is forced to battle against 灵罗娃娃 in only 2.1% of her rounds.

赏金猎人 vs 灵罗娃娃 Matchup Summary

赏金猎人 has done a great job of countering 灵罗娃娃. Typically, she wins a fantastic 54.7% of the time the champs face one another in. In 赏金猎人 vs 灵罗娃娃 matches, 赏金猎人’s side is 0.1% more probable to earn first blood, implying that she most likely will be able to get first blood versus 灵罗娃娃.

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物品

第一项

期望时间
长剑生命药水

下一个项目

5分钟
锯齿短匕剑翎

Core 赏金猎人 Items

22分钟
幽梦之灵赛瑞尔达的怨恨禁忌时机

可选项目

幽梦之苏醒守护天使感电三轮刃公理圆弧

Summoner Spells

summonerflash summoner spell D
summonerhaste summoner spell F

技能顺序

为赏金猎人提升等级的第一个技能q
>
为赏金猎人提供的第二种能力,以提高水平w
>
赏金猎人 最大化的最后一项技能e

符文

启迪先攻神奇之鞋饼干配送星界洞悉
巫术绝对专注风暴聚集
Adaptive ForceAdaptive ForceHealth Scaling
赏金猎人's passive ability p
赏金猎人's q ability q
赏金猎人's w ability w
赏金猎人's e ability e
赏金猎人's ultimate ability r
1
Q
2
E
3
W
4
Q
5
Q
6
R
7
Q
8
W
9
Q
10
W
11
R
12
W
13
W
14
E
15
E
16
R

Guide to Countering 灵罗娃娃 as 赏金猎人

Tips for Playing as 赏金猎人 against 灵罗娃娃

- 厄运小姐如果近期没有受到伤害,就会提高速度。避免受到攻击可以让她移动非常迅速。

- 如果敌方英雄躲在小兵背后,则对最远处的敌方小兵使用一箭双雕;它会弹射到敌方英雄身上造成大量伤害。

- 在【大步流星】尚未冷却时,要尽量利用【厄运的眷顾】来最大化攻击速度加成的持续时间。

Advice to Win Against 灵罗娃娃

格温必须用技能或攻击造成一次命中,才能再次施放她的终极技能,请在她的两次施放之间尽量躲避她。

格温需要进行几次攻击才能最大化她的伤害,因此请尽量打她一个措手不及。

格温的圣霭只会跟随她一次,然后 它就会在她离开时消散。

赏金猎人 vs 灵罗娃娃 Counter Stats

赏金猎人 Image
winRate
54.7 %
VS
winRate
45.3 %
灵罗娃娃 Image
8.1
< kills >
6.1
6
< deaths >
6.3
7
< assists >
4.5
1.88
< killingSprees >
1.41
173
< cs >
161
0.18
< dragons >
0.26
0.56
< inhibitors >
0.56
19,709
< physicalDamage >
3,017
1,156
< magicDamage >
15,599
899
< trueDamage >
3,770
21,766
< damageDealt >
22,387
19,423
< damageTaken >
30,496
12,786
< goldEarned >
12,118
2.51
< towers >
2.59
0.05
< barons >
0.07
4,420
< heal >
7,709
12,868
< xp >
14,991
20
< visionScore >
17
10
< wardsPlaced >
8
147
< ccTime >
150

How to Counter 灵罗娃娃 with 赏金猎人 in LoL

The stat comparisons shown on this page emphasize several influential 赏金猎人 vs. 灵罗娃娃 matchup statistics that can help you distinguish the distinctions between the two. As an example, 赏金猎人’s KDA ratio ([kills + assists] / deaths) of NaN is greater than 灵罗娃娃’s ratio of NaN, highlighting that 赏金猎人 may be more central to her team's team fighting capacity than 灵罗娃娃..

赏金猎人 typically has a slightly larger longest killing spree than her foe does. Commonly, she takes less damage than 灵罗娃娃. This typically indicates different amounts of tankyness; however, it can also imply that the champion with increased HP has less agility and thus is unable to kite away from further damage when engaged or poked.

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伤害数据

赏金猎人
灵罗娃娃
物理伤害
魔法伤害
真实伤害

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赏金猎人
灵罗娃娃

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Both LoL champions are great. Both champs have their pros and cons. In League's current meta, 赏金猎人 usually wins when taking on 灵罗娃娃, with a 54.7% win rate. Thus, 赏金猎人 makes a great counter for 灵罗娃娃.

While 赏金猎人 does have a much higher winrate compared to 灵罗娃娃, when on opposite teams, 赏金猎人 also has a much lower learning curve that makes her a less difficult champ to learn and master. You should be be fine when picking 赏金猎人 into 灵罗娃娃.

Furthermore, 赏金猎人 has almost no amount of CC and other utility, a similar amount to 灵罗娃娃. This often makes her just as valuable during teamfights, especially when trying to counter champions with a ton of burst damage.

While there isn't one best champion for every situation in League of Legends, in 赏金猎人 vs 灵罗娃娃 matchups, 赏金猎人 is the better champion with a noticably higher win rate, less champion complexity, and a similar amount of utility to help out your team members during late stage team fights.

赏金猎人 is a great counter for 灵罗娃娃. Make sure you focus your play on keeping up your gold income and clearing objectives. If you do that, you should be able to stand on your own as 赏金猎人 against 灵罗娃娃.

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If you would like to truly master 赏金猎人 to counter 灵罗娃娃 during both the early game and mid / late game phases of League of Legends, you should keep reading to learn a few extra lessons on this matchup. If you pay attention to the build and tips displayed above, you will increase your win rate significantly and be that much closer to League of Legends pro players.

赏金猎人 on average picks up a similar amount of CS relative to 灵罗娃娃. Champions who on average don't earn much CS typically don't have to have much CS to be valuable teammates, such as sup champs. They are able to scale well off of their abilities and first items alone. Yet, champs with large amounts of CS, such as hyper-carries, usually need a lot of items to be effective. In either situation, try to surpass the numbers reported here to do well.

The best items to prioritize in your 赏金猎人 versus 灵罗娃娃 build include 幽梦之灵, 赛瑞尔达的怨恨, and 禁忌时机. When 赏金猎人 included at least these three items in her build, she did much better when facing 灵罗娃娃 than with many other common item sets. In fact, 赏金猎人 had an average winrate of 54.7% battling 灵罗娃娃 with this build.

To have the highest probability of annihilating 灵罗娃娃 as 赏金猎人, 赏金猎人 players should take the 先攻, 神奇之鞋, 饼干配送, 星界洞悉, 绝对专注, and 风暴聚集 runes from the 启迪 and 巫术 rune sets. Of all the rune builds players chose for 赏金猎人 vs 灵罗娃娃 face-offs, this sequence of runes yielded the highest win rate. Notably, these runes gave a 54.7% win rate overall.

If you want to view 赏金猎人 vs 灵罗娃娃 tips and counter stats for a a specific rank, feel free to choose one from the selection menu displayed above. At first, the statistics and strategies displayed are computed using all rounds run with both champions.