7 stories matched Food and shelter and Male and (31-45 or 46-60 or Over 60) and village and woman
Your search did not match enough stories to do a complete analysis. Only basic information is showing.
How good is this collection? (63/100) When making inferences, it is important to have many perspectives. Running
our story quality test will measure this using the diversity of story collectors, named organizations,
locations, and the balance in story point of view and tone to estimate the collection's suitability for meta-analysis.
Each component of the score is between 0 and 100, with 100 being the best and 0 being the worst.
Diverse sources: 4/100 (highest when collection contains hundreds of stories with miniminal overlap among the storytellers, named organizations, and locations)
Completeness: 92/100 (100% when every storytellers answer every question)
Diverse points of view: 80/100 (100% when there is a good balance of points of view. Personal experiences carry more weight over organization perspectrives.
Balance in story tone: 75/100 (100% if collection has a balance of positive and negative perspectives)
Your collection has a negative tone.
2 distinct clusters within this collection: 1 - City: nairobi - 5 stories 2 - Org: individual - 4 stories
q2:Julia Anyango was a poor lady who saparated from her adrunken violent husband.She had rented a house in lenana village,she was jobless and she used to do menial jobs of washing clothes of the well to do familiesin the neighbouring village.
Anyango was hardworking woman who used to make ends meet through her health was deterioting very much, she had loosed weightand her skin was pale.She used to attend a neighbouring church pentecoastol church, the pastor was really touched by anyangos problem.It was helping in schooling her children and feeding. Her health continued deteroriating, one day the missionary came to visit the church, they were really touched by Anyango miseries.
They decided to take her to the hospital, they paid for the medication,after some time mary was discharge she looked well and able to continue taking medication at home her health improved they enrolled in tailoring course and she was able to finish the missionaries bought for her sewing machine which is using in her tailoring, her health has improved alot and she able to feed her children.Anyango is very thankful of missionaries who have helped really really her Q3:Never give up Q4:Pentecoastal church Q6:Nairobi Q7:Nairobi Q8:Lenana village Q9:1-2 years ago Q10:Male Q12:Saw it happen Q13:Mixed Q15:Yes Q17:[HORIZON] Question 7 has not been answered<<2012-08-13-DAGORETI-S#261-p#01>>_ Q18:Inspired Q19:Food and shelter,Family and Friends,Physical Needs Q37:Good idea that succeeded Q38:Specific solution Q39:Physical well-being Q40:Mixed Q122:31-45 Q132:None Q133:None Q134:CHURCH LEADER
q2: Njoki doesn't know who the parents are,where she comes from but she was adopted by an old woman who was walking around kiiri village.she was found in plastic bag crying.The woman was very disappointed and took her, washed her and reported the matter to Authority.she was later called if she can adopt Njoki because she had interest in her.Njoki was very happy with her adopted grandmother.though the woman was poor despite the situation she has raised Njoki well.Njoki is proud of her grandmother and joined Hidden Talent Centre here in Nairobi Ngando slum.she is being Sponsored with the centre and very kind.she encouraged other to share,help and be there for their people and community Q3:Change the Community Q4:Hidden Talent Q6:Kenya Q7:Murangaa Q8:Kirii Q9:Unknown Q10:Male Q12:Unknown Q13:Mixed Q15:Yes Q17:[HORIZON-Question 10 & 12 were not answered]<<2012-07-03-DAGORETTI CORNER-S#336-P#01>>_ Q18:Inspired Q19:Food and shelter,Family and Friends,Physical Needs Q37:Good idea that succeeded Q38:Mixed Q39:Social relations Q40:Mixed Q122:31-45 Q132:None Q133:None Q134:None
q2:John is an oarphan. She lived with his grandmother in Inyali village. His grandma is cruel woman. She always forced him to work morning to evening and she gave him little food.
John decided to run away due to overwork, no food, and cruel grandma. He joined urully children in the society who roam aimlessly in the village stealing.
Luckily John was saved from his cruel gradma whereby he met a christian who gave him food, clothes and place to stay. His state of confusion stopped. Now he is in Inyali Primary school, given books introduced to pupils. John is adisired loving and kind. His life is completely changed above all happy and has turn out as a christian. Q3:Protect children from child abuse Q4:Individual Q6:Kenya Q7:Sabatia County Q8:Inyali Q9:2-6 months ago Q10:Male Q12:Unknown Q13:The right people Q15:Yes Q17:[HORIZON]Q10NOT ANSWERED<<2012-08-13-DAGORETI-S#032-p#135>>_n/a Q18:Horrible Q19:Food and shelter,Security,Knowledge Q37:Good idea that succeeded Q38:Mixed Q39:Social relations Q40:Mixed Q122:31-45 Q132:None Q133:None Q134:Individual
q2:Mrs Juma is a mother of 3 children in our local slum village. She was pregnant and expectant as a result of poverty she was not able to go for refular maternity chek-up in a hospital hospital when time for her delivery came she did not have any idea of what to do and where to start as a result she delivered in the hands of a local known midwife in the slum. as this is work of this woman, Mrs Juma was detained by this woman for 17 days as she could not pay the charges required by the midwife, so the child stayed for all those days in very unfilthy conditions until when we heard the stay and paid the woman her dues of Ksh2000. We hope that the child did not get any disease and will be alright. Q3:Born Guilty Q4:My family Q6:KENYA Q7:NAIROBI Q8:Soweto Q9:Less than 2 months ago Q10:Male Q12:Saw it happen Q13:The right people Q15:Yes Q17:<<02-04-2012-SOWETO/MZESA-S#001-P#175>>_n/a Q18:Horrible Q19:Food and shelter,Family and Friends,Self-esteem Q37:Good idea that failed Q38:Broad need Q39:Economic opportunity Q40:Mixed Q122:31-45 Q132:-1.31487200000000 Q133:36.80095900000000 Q134:Family
q2:I was passing by near Ngando village when I saw a woman sitting on the grass who seemed to be looking for something. Every couple of minutes should could pick a four leaf clover.
I asked her. How are you finding so many? She said, "I just know that they're there." Some of the people who were standing nearby dropped them. Q3:Four leaf clovers Q4:Individual Q6:Kenya Q7:Nairobi Q8:Dagoretti Q9:2-6 months ago Q10:Male Q12:Saw it happen Q13:The right people Q15:Yes Q17:[HORIZON] Q16 & Q19 phone numbers have not been indicated. <<2012-05-30-DAGORETI CORNER-S#306-P#01>>_ Q18:Inspired Q19:Food and shelter,Physical Needs Q37:Good idea that succeeded Q38:Specific solution Q39:Social relations Q40:Mixed Q122:31-45 Q132:None Q133:None Q134:Individual
q2:In our village there is a woman who has been helping the community in health care to people without paying her this has helped the people to live in a health community because of the treatment got from this woman Q3:medical care Q4:individual Q5:health, care, woman, live, treatment Q6:uganda Q7:kampala Q8:mbuya Q9:More than 2 years ago Q10:Male Q12:Heard about it happening Q13:The right people Q15:Yes Q17:<<25-11-2011-CEPO-S#091-P#01>>_ Q18:Inspired Q19:Food and shelter,Security,Family and Friends Q23:12 Q37:Good idea that succeeded Q38:Specific solution Q39:Physical well-being Q40:It requires a continuous effort Q122:31-45 Q132:0.41667000000000 Q133:32.58333000000000 Q134:Individual
q2:Based on true story,about a woman (widow) who suffered a painful life. She was married and blessed with three children stayed at 4 bedroom house her children at boarding .She and her husband worked at airport.
Death the cause of her mysery immediately after her husbands brothers who also demolished her house and sold all the households including the land.
She took way to where she was born (village) her brothers also did not spare her to threw her out. Came back to Nairobi shockingly,after reporting to work, she saved with sammary dismisal and more over denied compensation of her husband and her final due .
Back to house landlord did not give her time even to mourn her husbands death, threw her out of the 4 bedroom house. Now she stayed at Kayole a single room (Iron).
That very year her first born passed KCPE with over 400 marks No school fees , no food in short life to her changed to the poorest person in the world.Her boarding school children dropped to day school and even spend the whole term at home.Last year the two of her children were sposored by a well wisher.Now the problem is with her child who lost National school to day schooland even now as am writting this story she he has no school fees and he is on the fourth year though the school headteacher sometimes have mercy on him due to her bright talented education .For now he is looking for a well wisher who can sponser her to finish the secondary level education. Q3:SUFFERING AND SMILING MEANT FOR A WIDOW AND ORPHANS Q4:INDIVIDUAL Q5:bedroom, time, orphans, give, house Q6:KENYA Q7:NAIROBI/MACHAKOS Q8:KAYOLE-SOWETO VILLAGE Q9:1-2 years ago Q10:Male Q12:Was affected by what happened Q13:The wrong people Q15:Yes Q17:<<26-12-11-KAYOLE SOWETO-S#007-P#01>>_ Q18:Hopeful Q19:Food and shelter,Family and Friends,Knowledge Q23:95 Q37:Bad idea that failed Q38:Broad need Q39:Social relations Q40:It requires a continuous effort Q122:31-45 Q132:None Q133:None Q134:Individual
 
Found 7 records. mysql icon_filters: group_id between 0 and 5000 and q10 = 'Male' and q19 like '%Food and shelter%' and q122 in ('31-45','46-60','Over 60') and (( q2 like '%village%' and q2 like '%woman%' ) or ( q3 like '%village%' and q3 like '%woman%' ) or ( q4 like '%village%' and q4 like '%woman%' ) or ( q5 like '%village%' and q5 like '%woman%' ) or ( q6 like '%village%' and q6 like '%woman%' ) or ( q7 like '%village%' and q7 like '%woman%' ) or ( q8 like '%village%' and q8 like '%woman%' ) or ( q11 like '%village%' and q11 like '%woman%' ) or ( q17 like '%village%' and q17 like '%woman%' ) or ( q26 like '%village%' and q26 like '%woman%' ) or ( q27 like '%village%' and q27 like '%woman%' ) or ( q28 like '%village%' and q28 like '%woman%' ) or ( q29 like '%village%' and q29 like '%woman%' ) or ( q35 like '%village%' and q35 like '%woman%' ) or ( q41 like '%village%' and q41 like '%woman%' ) or ( q42 like '%village%' and q42 like '%woman%' ) or ( q43 like '%village%' and q43 like '%woman%' ) or ( q46 like '%village%' and q46 like '%woman%' ) or ( q47 like '%village%' and q47 like '%woman%' ) or ( q60 like '%village%' and q60 like '%woman%' ) or ( q65 like '%village%' and q65 like '%woman%' ) or ( q70 like '%village%' and q70 like '%woman%' ) or ( q71 like '%village%' and q71 like '%woman%' ) or ( q72 like '%village%' and q72 like '%woman%' ) or ( q73 like '%village%' and q73 like '%woman%' ) or ( q74 like '%village%' and q74 like '%woman%' ) or ( q75 like '%village%' and q75 like '%woman%' ) or ( q76 like '%village%' and q76 like '%woman%' ) or ( q77 like '%village%' and q77 like '%woman%' ) or ( q80 like '%village%' and q80 like '%woman%' ) or ( q81 like '%village%' and q81 like '%woman%' ) or ( q86 like '%village%' and q86 like '%woman%' ) or ( q87 like '%village%' and q87 like '%woman%' ) or ( q88 like '%village%' and q88 like '%woman%' ) or ( q89 like '%village%' and q89 like '%woman%' ) or ( q98 like '%village%' and q98 like '%woman%' ) or ( q99 like '%village%' and q99 like '%woman%' ) or ( q110 like '%village%' and q110 like '%woman%' ) or ( q111 like '%village%' and q111 like '%woman%' ) or ( q116 like '%village%' and q116 like '%woman%' ) or ( q117 like '%village%' and q117 like '%woman%' ) or ( q123 like '%village%' and q123 like '%woman%' ) or ( q125 like '%village%' and q125 like '%woman%' ) or ( q132 like '%village%' and q132 like '%woman%' ) or ( q133 like '%village%' and q133 like '%woman%' ) or ( q134 like '%village%' and q134 like '%woman%' ) or ( q135 like '%village%' and q135 like '%woman%' ) or ( q136 like '%village%' and q136 like '%woman%' ) or ( q138 like '%village%' and q138 like '%woman%' ) or ( q141 like '%village%' and q141 like '%woman%' ) or ( q142 like '%village%' and q142 like '%woman%' ) or ( q151 like '%village%' and q151 like '%woman%' )) LIMIT 4000; filter_questions ['q10', 'q19', 'q122'] merge:ignore A[BgJ50x5pBc6u]:SUCCESS: 1 rows inserted. not enough values to unpack (expected 3, got 2)